Deck 16: Regression Models for Nonlinear Relationships

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سؤال
A quadratic regression model is a special type of a polynomial regression model.
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سؤال
The curve representing the regression equation The curve representing the regression equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>has a U-shape if b<sub>2 </sub>> 0.<div style=padding-top: 35px> = b0 + b1x + b2x2has a U-shape if b2 > 0.
سؤال
For the logarithmic model y = β0 + β1ln(x)+ ε,β1/100 is the approximate change in E(y)when x increases by 1%.
سؤال
It is not very informative to start with developing a scatterplot of the response variable against the explanatory variable.
سؤال
The cubic regression model,y = β0 + β1x + β2x2 + β3x3 + ε,is used when we assume that the relationship between x and y should be captured by a function that has either minimum or maximum,but not both.
سؤال
The quadratic regression model is appropriate when the slope,capturing the influence of x on y,changes in magnitude as well as sign.
سؤال
The regression model ln(y)= β0 + β1 ln(x)+ ε is called logarithmic.
سؤال
The log-log regression model is ________ in the variables.
سؤال
The fit of the regression equations The fit of the regression equations   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup> and   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup> + b<sub>3</sub>x<sup>3 </sup>can be compared using the coefficient of determination R<sup>2</sup>.<div style=padding-top: 35px> = b0 + b1x + b2x2 and The fit of the regression equations   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup> and   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup> + b<sub>3</sub>x<sup>3 </sup>can be compared using the coefficient of determination R<sup>2</sup>.<div style=padding-top: 35px> = b0 + b1x + b2x2 + b3x3 can be compared using the coefficient of determination R2.
سؤال
The cubic regression model allows for two changes in ______.
سؤال
The fit of the models y = β0 + β1x + ε and ln(y)= β0 + β1ln(x)+ ε can be compared using the coefficients R2 found in the two corresponding Excel's regression outputs.
سؤال
The equation y = β0 + β1x + β2x2 + ε is called a cubic regression model.
سؤال
The fit of the models y = β0 + β1x + β2x2+ ε and y = β0 + β1ln(x)+ ε can be compared using the coefficient of determination R2.
سؤال
It is important to superimpose linear and quadratic trends on the scatterplot using ______.
سؤال
The regression model ln(y)= β0 + β1x + ε is called exponential.
سؤال
When the data are available on x and y,it is easy to estimate a polynomial regression model.
سؤال
For the model ln(y)= β0 + β1ln(x)+ ε with 0 < β1 < 1,if x increases than E(y)increases but at a slower rate.
سؤال
Many nonlinear regression models can be studied under the linear regression framework using transformation of the response variable and/or the explanatory variables.
سؤال
For the exponential model ln(y)= β0 + β1x + ε,β1 × 100% is the approximate percentage change in E(y)when x increases by 1%.
سؤال
The fit of the models y = β0 + β1x + ε and y = β0 + β1ln(x)+ ε can be compared using the coefficient of determination R2.
سؤال
For the quadratic equation <strong>For the quadratic equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>,which of the following expressions must be zero in order to minimize or maximize the predicted y?</strong> A) b<sub>1</sub> + 2b<sub>2</sub>x B) 2b<sub>1</sub> + b<sub>2</sub>x C) -b<sub>1</sub>/2b<sub>2</sub> D) -b<sub>2</sub>/2b<sub>2</sub> <div style=padding-top: 35px> = b0 + b1x + b2x2,which of the following expressions must be zero in order to minimize or maximize the predicted y?

A) b1 + 2b2x
B) 2b1 + b2x
C) -b1/2b2
D) -b2/2b2
سؤال
For the quadratic regression equation <strong>For the quadratic regression equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>,the predicted y achieves its optimum (maximum or minimum)when x is _________.</strong> A) -2b<sub>2</sub>/b<sub>1</sub> B) -b<sub>1</sub>/2b<sub>2</sub> C) b<sub>1</sub>/2b<sub>2</sub> D) 2b<sub>1</sub>/b<sub>2</sub> <div style=padding-top: 35px> = b0 + b1x + b2x2,the predicted y achieves its optimum (maximum or minimum)when x is _________.

A) -2b2/b1
B) -b1/2b2
C) b1/2b2
D) 2b1/b2
سؤال
When not all variables are transformed into logarithms the models are called _______ models.
سؤال
The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers. <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   Assuming that the values of Hires can be nonintegers,what is the maximum value of Productivity?</strong> A) 29.58 B) 124.603 C) 35.086 D) 127.50 <div style=padding-top: 35px> Assuming that the values of Hires can be nonintegers,what is the maximum value of Productivity?

A) 29.58
B) 124.603
C) 35.086
D) 127.50
سؤال
The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers. <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   What is the percentage of variations in the productivity explained by the number of hired workers?</strong> A) 85.69% B) 0.7342% C) 90.54% D) 73.42% <div style=padding-top: 35px> What is the percentage of variations in the productivity explained by the number of hired workers?

A) 85.69%
B) 0.7342%
C) 90.54%
D) 73.42%
سؤال
For the quadratic regression equation <strong>For the quadratic regression equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>,the optimum (maximum or minimum)value of   is _________.</strong> A) -b<sub>1</sub>/2b<sub>2</sub> B) b<sub>1</sub>/2b<sub>2</sub> C)   D)   <div style=padding-top: 35px> = b0 + b1x + b2x2,the optimum (maximum or minimum)value of <strong>For the quadratic regression equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>,the optimum (maximum or minimum)value of   is _________.</strong> A) -b<sub>1</sub>/2b<sub>2</sub> B) b<sub>1</sub>/2b<sub>2</sub> C)   D)   <div style=padding-top: 35px> is _________.

A) -b1/2b2
B) b1/2b2
C) <strong>For the quadratic regression equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>,the optimum (maximum or minimum)value of   is _________.</strong> A) -b<sub>1</sub>/2b<sub>2</sub> B) b<sub>1</sub>/2b<sub>2</sub> C)   D)   <div style=padding-top: 35px>
D) <strong>For the quadratic regression equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>,the optimum (maximum or minimum)value of   is _________.</strong> A) -b<sub>1</sub>/2b<sub>2</sub> B) b<sub>1</sub>/2b<sub>2</sub> C)   D)   <div style=padding-top: 35px>
سؤال
The log-log and the __________ models can allow similar shapes.
سؤال
Although a polynomial regression model of order two or more is nonlinear,when it is fitted to the data we use the _______ regression to make this fit.

A) nonlinear
B) logistic
C) polynomial
D) linear
سؤال
To compute the coefficient of determination R2 we have to use Excel's ________ function first to derive the correlation between y and To compute the coefficient of determination R<sup>2 </sup>we have to use Excel's ________ function first to derive the correlation between y and   .<div style=padding-top: 35px> .
سؤال
Which of the following is a quadratic regression equation?

A) <strong>Which of the following is a quadratic regression equation?</strong> A)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>2</sup> B)   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>y<sup>2</sup> C)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>-2</sup> D)   <div style=padding-top: 35px> = b0 + b1x-1 + b2x2
B) <strong>Which of the following is a quadratic regression equation?</strong> A)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>2</sup> B)   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>y<sup>2</sup> C)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>-2</sup> D)   <div style=padding-top: 35px> = b0 + b1x + b2y2
C) <strong>Which of the following is a quadratic regression equation?</strong> A)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>2</sup> B)   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>y<sup>2</sup> C)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>-2</sup> D)   <div style=padding-top: 35px> = b0 + b1x-1 + b2x-2
D) <strong>Which of the following is a quadratic regression equation?</strong> A)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>2</sup> B)   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>y<sup>2</sup> C)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>-2</sup> D)   <div style=padding-top: 35px>
سؤال
The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers. <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   For which value of Hires is the predicted Productivity maximized? Note: Do not round to the nearest integer.</strong> A) 29.58 B) 124.60 C) 35.086 D) 27.34 <div style=padding-top: 35px> For which value of Hires is the predicted Productivity maximized? Note: Do not round to the nearest integer.

A) 29.58
B) 124.60
C) 35.086
D) 27.34
سؤال
How many coefficients need to be estimated in the quadratic regression model?

A) 4
B) 3
C) 2
D) 1
سؤال
What is the effect of b2 < 0 in the case of the quadratic equation <strong>What is the effect of b<sub>2</sub> < 0 in the case of the quadratic equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>?</strong> A) The curve is U-shaped. B) The curve is inverted U-shaped. C) The curve is a straight line. D) The curve is not a parabola. <div style=padding-top: 35px> = b0 + b1x + b2x2?

A) The curve is U-shaped.
B) The curve is inverted U-shaped.
C) The curve is a straight line.
D) The curve is not a parabola.
سؤال
Which of the following regression models is not polynomial?

A) y = β0 + β1x + ε
B) y = β0 + β1x + β2 x2 + ε
C) y = β0 + β1 x-1 + ε
D) y = β0 + β1x + β2x2 + β3x3
سؤال
The logarithmic model is especially attractive when only the ____________ variable is better captured in percentages.
سؤال
An inverted U-shaped curve is also known as _______.

A) concave
B) convex
C) opaque
D) hyperbola
سؤال
It is important to evaluate the estimated _________ effect of the explanatory variable x on the predicted value of the response variable It is important to evaluate the estimated _________ effect of the explanatory variable x on the predicted value of the response variable   .<div style=padding-top: 35px> .
سؤال
The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers. <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   Which of the following is the predicted productivity when 32 workers are hired?</strong> A) 124.00 B) 122.46 C) 121.60 D) 113.50 <div style=padding-top: 35px> Which of the following is the predicted productivity when 32 workers are hired?

A) 124.00
B) 122.46
C) 121.60
D) 113.50
سؤال
If the data are available on the response variable y and the explanatory variable x,and the fit of the quadratic regression model y = β0 + β1x + β2x2 + ε is to be tested,standard linear regression can be applied on ________.

A) y and x
B) y,x,and x2
C) y,xy,and x2
D) y,y2,and x2
سؤال
The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers. <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   The quadratic regression equation found is _________.</strong> A)   = 35.086 + 6.0523Hires - 0.1023Hires<sup>2</sup> B)   = 6.0523 + 35.086Hires - 0.1023Hires<sup>2</sup> C)   = 6.0523 − 35.086Hires + 0.1023Hires<sup>2</sup> D)   <div style=padding-top: 35px> The quadratic regression equation found is _________.

A) <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   The quadratic regression equation found is _________.</strong> A)   = 35.086 + 6.0523Hires - 0.1023Hires<sup>2</sup> B)   = 6.0523 + 35.086Hires - 0.1023Hires<sup>2</sup> C)   = 6.0523 − 35.086Hires + 0.1023Hires<sup>2</sup> D)   <div style=padding-top: 35px> = 35.086 + 6.0523Hires - 0.1023Hires2
B) <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   The quadratic regression equation found is _________.</strong> A)   = 35.086 + 6.0523Hires - 0.1023Hires<sup>2</sup> B)   = 6.0523 + 35.086Hires - 0.1023Hires<sup>2</sup> C)   = 6.0523 − 35.086Hires + 0.1023Hires<sup>2</sup> D)   <div style=padding-top: 35px> = 6.0523 + 35.086Hires - 0.1023Hires2
C) <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   The quadratic regression equation found is _________.</strong> A)   = 35.086 + 6.0523Hires - 0.1023Hires<sup>2</sup> B)   = 6.0523 + 35.086Hires - 0.1023Hires<sup>2</sup> C)   = 6.0523 − 35.086Hires + 0.1023Hires<sup>2</sup> D)   <div style=padding-top: 35px> = 6.0523 − 35.086Hires + 0.1023Hires2
D) <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   The quadratic regression equation found is _________.</strong> A)   = 35.086 + 6.0523Hires - 0.1023Hires<sup>2</sup> B)   = 6.0523 + 35.086Hires - 0.1023Hires<sup>2</sup> C)   = 6.0523 − 35.086Hires + 0.1023Hires<sup>2</sup> D)   <div style=padding-top: 35px>
سؤال
Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   What is the number of estimated coefficients of the cubic regression model?</strong> A) 1 B) 2 C) 3 D) 4 <div style=padding-top: 35px> What is the number of estimated coefficients of the cubic regression model?

A) 1
B) 2
C) 3
D) 4
سؤال
Typically,the sales volume declines with an increase of a product's price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product's price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   Using the quadratic equation,predict the sales if the luxury good is priced at $100.</strong> A) 1191.87 B) 1157.64 C) 1160.79 D) 1168.00 <div style=padding-top: 35px> Using the quadratic equation,predict the sales if the luxury good is priced at $100.

A) 1191.87
B) 1157.64
C) 1160.79
D) 1168.00
سؤال
The coefficient of determination R2 cannot be used to compare the linear and quadratic models,because

A) the quadratic model has one parameter more to estimate.
B) the quadratic model has two parameters more to estimate.
C) the quadratic model always has a lower R2.
D) R2 is not defined for the quadratic model.
سؤال
Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   Using the cubic regression equation,predict the sales if the luxury good is priced at $100.</strong> A) 1171.85 B) 1133.10 C) 1106.61 D) 1092.91 <div style=padding-top: 35px> Using the cubic regression equation,predict the sales if the luxury good is priced at $100.

A) 1171.85
B) 1133.10
C) 1106.61
D) 1092.91
سؤال
The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers. <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   Assuming that the number of hired workers must be an integer,what is the maximum productivity to achieve?</strong> A) 29.58 B) 30.00 C) 124.603 D) 124.585 <div style=padding-top: 35px> Assuming that the number of hired workers must be an integer,what is the maximum productivity to achieve?

A) 29.58
B) 30.00
C) 124.603
D) 124.585
سؤال
Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   For which of the following two prices are the sales predicted by the quadratic regression equation equal 1700 units?</strong> A) 60.51 and 150.15 B) 61.51 and 151.15 C) 62.51 and 152.15 D) 63.51 and 153.15 <div style=padding-top: 35px> For which of the following two prices are the sales predicted by the quadratic regression equation equal 1700 units?

A) 60.51 and 150.15
B) 61.51 and 151.15
C) 62.51 and 152.15
D) 63.51 and 153.15
سؤال
Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   For which of the following prices do sales predicted by the quadratic regression equation reach their minimum?</strong> A) 106.33 B) 1157.16 C) 100.41 D) 1166.64 <div style=padding-top: 35px> For which of the following prices do sales predicted by the quadratic regression equation reach their minimum?

A) 106.33
B) 1157.16
C) 100.41
D) 1166.64
سؤال
When the predicted value of the response variable has to be found,in which of the following two models,is there a need for the standard error correction?

A) Linear and log-log
B) Log-log and logarithmic
C) Logarithmic and linear
D) Log-log and exponential
سؤال
For which of the following models,the formula <strong>For which of the following models,the formula   for finding the predicted value of y is used?</strong> A)   B)   C)   D)   <div style=padding-top: 35px> for finding the predicted value of y is used?

A) <strong>For which of the following models,the formula   for finding the predicted value of y is used?</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
B) <strong>For which of the following models,the formula   for finding the predicted value of y is used?</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
C) <strong>For which of the following models,the formula   for finding the predicted value of y is used?</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
D) <strong>For which of the following models,the formula   for finding the predicted value of y is used?</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
سؤال
Given the data on y and x,what is needed to run Excel regression for the polynomial model of order 3?

A) Creating the values of one pseudo-explanatory variable by squaring the values of x.
B) Creating the values of two pseudo-explanatory variables by squaring and cubing the values of x,respectively.
C) Creating the values of three pseudo-explanatory variables by raising the values of x to the power of 2,3,and 4,respectively.
D) Nothing is needed.
سؤال
Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   For the considered range of the price,the relationship between Price and Sales should be described by a _________.</strong> A) concave function B) hyperbola C) convex function D) linear function <div style=padding-top: 35px> For the considered range of the price,the relationship between Price and Sales should be described by a _________.

A) concave function
B) hyperbola
C) convex function
D) linear function
سؤال
What does a positive value for price elasticity indicate if y represents the quantity demanded of a particular good and x is its unit price in a log-log regression model?

A) As price increases,the expected sales decreases.
B) As price decreases,the expected sales increases.
C) As price increases,the expected sales increases.
D) As price decreases,the expected sales remain the same.
سؤال
Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   What can be said about the linear relationship between Price and Sales?</strong> A) The relationship is negatively moderate. B) There is no relationship. C) The relationship is positively strong. D) The relationship is negatively strong. <div style=padding-top: 35px> What can be said about the linear relationship between Price and Sales?

A) The relationship is negatively moderate.
B) There is no relationship.
C) The relationship is positively strong.
D) The relationship is negatively strong.
سؤال
For the logarithmic model ln(y)= β0 + β1ln(x)+ ε,the predicted value of y is computed by _______________.

A) <strong>For the logarithmic model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by _______________.</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
B) <strong>For the logarithmic model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by _______________.</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
C) <strong>For the logarithmic model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by _______________.</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
D) <strong>For the logarithmic model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by _______________.</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
سؤال
For the log-log model ln(y)= β0 + β1ln(x)+ ε,the predicted value of y is computed by ________________.

A) <strong>For the log-log model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by ________________.</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
B) <strong>For the log-log model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by ________________.</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
C) <strong>For the log-log model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by ________________.</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
D) <strong>For the log-log model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by ________________.</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
سؤال
Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   Which of the following models is most likely to be chosen in order to describe the relationship between Price and Sales?</strong> A) Linear B) Quadratic C) Cubic D) Exponential <div style=padding-top: 35px> Which of the following models is most likely to be chosen in order to describe the relationship between Price and Sales?

A) Linear
B) Quadratic
C) Cubic
D) Exponential
سؤال
For the exponential model ln(y)= β0 + β1x + ε ,if x increases by one unit,then E(y)changes by approximately ____________.

A) β1×100%
B) β1×100 units
C) β1%
D) β1units
سؤال
A model in which the response variable is transformed into its natural logarithm is called a(n)______________.

A) log-log model
B) logarithmic model
C) exponential model
D) linear model
سؤال
The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers. <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   Assuming that the number of hired workers must be integer,how many workers should be hired to achieve the highest productivity?</strong> A) 26 B) 28 C) 30 D) 32 <div style=padding-top: 35px> Assuming that the number of hired workers must be integer,how many workers should be hired to achieve the highest productivity?

A) 26
B) 28
C) 30
D) 32
سؤال
A model with one explanatory variable being the only one transformed into its natural logarithm is called a(n)___________.

A) log-log model
B) logarithmic model
C) exponential model
D) linear model
سؤال
The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height. <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     If the age of a tree increases by 1%,then its predicted height increases by approximately _________.</strong> A) 6.1082% B) 0.06108% C) 6.1082 feet D) 0.061082 feet <div style=padding-top: 35px> <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     If the age of a tree increases by 1%,then its predicted height increases by approximately _________.</strong> A) 6.1082% B) 0.06108% C) 6.1082 feet D) 0.061082 feet <div style=padding-top: 35px> If the age of a tree increases by 1%,then its predicted height increases by approximately _________.

A) 6.1082%
B) 0.06108%
C) 6.1082 feet
D) 0.061082 feet
سؤال
The following data show the demand for an airline ticket dependent on the price of this ticket. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Assuming that the sample correlation coefficient between Demand and   = exp(26.3660 - 3.2577 ln(Price)+ (0.2071)<sup>2</sup>/2)is 0.956,what is the percentage of variations in Demand explained by the log-log regression equation?</strong> A) 98.52% B) 98.50% C) 91.39% D) 97.93% <div style=padding-top: 35px> For the assumed cubic and log-log regression models,Demand = β0 + β1Price + β2Price2 + β3Price3 + ε and ln(Demand)= β0 + β1ln(Price)+ ε,the following regression results are available. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Assuming that the sample correlation coefficient between Demand and   = exp(26.3660 - 3.2577 ln(Price)+ (0.2071)<sup>2</sup>/2)is 0.956,what is the percentage of variations in Demand explained by the log-log regression equation?</strong> A) 98.52% B) 98.50% C) 91.39% D) 97.93% <div style=padding-top: 35px> Assuming that the sample correlation coefficient between Demand and <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Assuming that the sample correlation coefficient between Demand and   = exp(26.3660 - 3.2577 ln(Price)+ (0.2071)<sup>2</sup>/2)is 0.956,what is the percentage of variations in Demand explained by the log-log regression equation?</strong> A) 98.52% B) 98.50% C) 91.39% D) 97.93% <div style=padding-top: 35px> = exp(26.3660 - 3.2577 ln(Price)+ (0.2071)2/2)is 0.956,what is the percentage of variations in Demand explained by the log-log regression equation?

A) 98.52%
B) 98.50%
C) 91.39%
D) 97.93%
سؤال
The following data show the demand for an airline ticket dependent on the price of this ticket. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Which of the following does the slope of the obtained log-log regression equation   = 26.3660 - 3.2577 ln(Price)signify?</strong> A) For every 1% increase in the price,the predicted demand declines by approximately 3.2577%. B) For every 1% increase in the demand,the expected price increases by approximately 3.2577%. C) For every 1% increase in the demand,the expected price decreases by approximately 3.2577%. D) For every 1% increase in the price,the predicted demand increases by approximately 3.2577%. <div style=padding-top: 35px> For the assumed cubic and log-log regression models,Demand = β0 + β1Price + β2Price2 + β3Price3 + ε and ln(Demand)= β0 + β1ln(Price)+ ε,the following regression results are available. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Which of the following does the slope of the obtained log-log regression equation   = 26.3660 - 3.2577 ln(Price)signify?</strong> A) For every 1% increase in the price,the predicted demand declines by approximately 3.2577%. B) For every 1% increase in the demand,the expected price increases by approximately 3.2577%. C) For every 1% increase in the demand,the expected price decreases by approximately 3.2577%. D) For every 1% increase in the price,the predicted demand increases by approximately 3.2577%. <div style=padding-top: 35px> Which of the following does the slope of the obtained log-log regression equation <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Which of the following does the slope of the obtained log-log regression equation   = 26.3660 - 3.2577 ln(Price)signify?</strong> A) For every 1% increase in the price,the predicted demand declines by approximately 3.2577%. B) For every 1% increase in the demand,the expected price increases by approximately 3.2577%. C) For every 1% increase in the demand,the expected price decreases by approximately 3.2577%. D) For every 1% increase in the price,the predicted demand increases by approximately 3.2577%. <div style=padding-top: 35px> = 26.3660 - 3.2577 ln(Price)signify?

A) For every 1% increase in the price,the predicted demand declines by approximately 3.2577%.
B) For every 1% increase in the demand,the expected price increases by approximately 3.2577%.
C) For every 1% increase in the demand,the expected price decreases by approximately 3.2577%.
D) For every 1% increase in the price,the predicted demand increases by approximately 3.2577%.
سؤال
The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height. <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     What is the regression model used to describe the relationship between Height and Age?</strong> A) Exponential model B) Logarithmic model C) Linear model D) Log-log model <div style=padding-top: 35px> <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     What is the regression model used to describe the relationship between Height and Age?</strong> A) Exponential model B) Logarithmic model C) Linear model D) Log-log model <div style=padding-top: 35px> What is the regression model used to describe the relationship between Height and Age?

A) Exponential model
B) Logarithmic model
C) Linear model
D) Log-log model
سؤال
The following data show the demand for an airline ticket dependent on the price of this ticket. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Using the log-log model,which of the following is the predicted demand when the price is $200?</strong> A) 10,874.92 B) 9,201.45 C) 7,849.25 D) 12,499.98 <div style=padding-top: 35px> For the assumed cubic and log-log regression models,Demand = β0 + β1Price + β2Price2 + β3Price3 + ε and ln(Demand)= β0 + β1ln(Price)+ ε,the following regression results are available. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Using the log-log model,which of the following is the predicted demand when the price is $200?</strong> A) 10,874.92 B) 9,201.45 C) 7,849.25 D) 12,499.98 <div style=padding-top: 35px> Using the log-log model,which of the following is the predicted demand when the price is $200?

A) 10,874.92
B) 9,201.45
C) 7,849.25
D) 12,499.98
سؤال
The logarithmic and log-log models,y = β0 + β1ln(x)+ ε and ln(y)= β0 + β1 ln(x)+ ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit? <strong>The logarithmic and log-log models,y = β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε and ln(y)= β<sub>0</sub> + β<sub>1</sub> ln(x)+ ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit?  </strong> A) The logarithmic model. B) The log-log model. C) The models are not comparable. D) The provided information is not sufficient to make the conclusion. <div style=padding-top: 35px>

A) The logarithmic model.
B) The log-log model.
C) The models are not comparable.
D) The provided information is not sufficient to make the conclusion.
سؤال
The following data show the demand for an airline ticket dependent on the price of this ticket. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Which of the following is the percentage of variations in ln(Demand)explained by the log-log regression equation?</strong> A) 98.52% B) 98.50% C) 91.39% D) 97.93% <div style=padding-top: 35px> For the assumed cubic and log-log regression models,Demand = β0 + β1Price + β2Price2 + β3Price3 + ε and ln(Demand)= β0 + β1ln(Price)+ ε,the following regression results are available. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Which of the following is the percentage of variations in ln(Demand)explained by the log-log regression equation?</strong> A) 98.52% B) 98.50% C) 91.39% D) 97.93% <div style=padding-top: 35px> Which of the following is the percentage of variations in ln(Demand)explained by the log-log regression equation?

A) 98.52%
B) 98.50%
C) 91.39%
D) 97.93%
سؤال
Which of the following regression models is most likely to provide the best fit for the data represented by the following scatterplot? <strong>Which of the following regression models is most likely to provide the best fit for the data represented by the following scatterplot?  </strong> A) Exponential model B) Logarithmic model C) Linear model D) Log-log model <div style=padding-top: 35px>

A) Exponential model
B) Logarithmic model
C) Linear model
D) Log-log model
سؤال
The linear and logarithmic models,y = β0 + β1x + ε and y = β0 + β1 ln(x)+ ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit? <strong>The linear and logarithmic models,y = β<sub>0</sub> + β<sub>1</sub>x + ε and y = β<sub>0</sub> + β<sub>1</sub> ln(x)+ ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit?  </strong> A) The linear model. B) The logarithmic model. C) The models are not comparable. D) The provided information is not sufficient to make the conclusion. <div style=padding-top: 35px>

A) The linear model.
B) The logarithmic model.
C) The models are not comparable.
D) The provided information is not sufficient to make the conclusion.
سؤال
The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height. <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     If a cherry tree is planted as a one-year-old and six-foot-tall tree,which of the following is the estimated time needed by the tree to reach 16.5 feet in height?</strong> A) About 4 years B) About 4.5 years C) About 5 years D) About 5.5 years <div style=padding-top: 35px> <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     If a cherry tree is planted as a one-year-old and six-foot-tall tree,which of the following is the estimated time needed by the tree to reach 16.5 feet in height?</strong> A) About 4 years B) About 4.5 years C) About 5 years D) About 5.5 years <div style=padding-top: 35px> If a cherry tree is planted as a one-year-old and six-foot-tall tree,which of the following is the estimated time needed by the tree to reach 16.5 feet in height?

A) About 4 years
B) About 4.5 years
C) About 5 years
D) About 5.5 years
سؤال
The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height. <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     Which of the following is the predicted height of an eight-year-old cherry tree that was planted as a one-year-old and six-foot-tall tree?</strong> A) 54.96 B) 42.66 C) 17.04 D) 18.80 <div style=padding-top: 35px> <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     Which of the following is the predicted height of an eight-year-old cherry tree that was planted as a one-year-old and six-foot-tall tree?</strong> A) 54.96 B) 42.66 C) 17.04 D) 18.80 <div style=padding-top: 35px> Which of the following is the predicted height of an eight-year-old cherry tree that was planted as a one-year-old and six-foot-tall tree?

A) 54.96
B) 42.66
C) 17.04
D) 18.80
سؤال
Which of the following regression models is most likely to provide the best fit for the data represented by the following scatterplot? <strong>Which of the following regression models is most likely to provide the best fit for the data represented by the following scatterplot?  </strong> A) Exponential model B) Logarithmic model C) Linear model D) Log-log model <div style=padding-top: 35px>

A) Exponential model
B) Logarithmic model
C) Linear model
D) Log-log model
سؤال
The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height. <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     The 98.63% of the variations in Height is explained by _______.</strong> A) Height B) Age C) ln(Age) D) ln(Height) <div style=padding-top: 35px> <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     The 98.63% of the variations in Height is explained by _______.</strong> A) Height B) Age C) ln(Age) D) ln(Height) <div style=padding-top: 35px> The 98.63% of the variations in Height is explained by _______.

A) Height
B) Age
C) ln(Age)
D) ln(Height)
سؤال
The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height. <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     Which of the following is the correlation coefficient between Height and ln(Age)?</strong> A) −0.9863 B) 0.9863 C) −0.9931 D) 0.9931 <div style=padding-top: 35px> <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     Which of the following is the correlation coefficient between Height and ln(Age)?</strong> A) −0.9863 B) 0.9863 C) −0.9931 D) 0.9931 <div style=padding-top: 35px> Which of the following is the correlation coefficient between Height and ln(Age)?

A) −0.9863
B) 0.9863
C) −0.9931
D) 0.9931
سؤال
A model in which both the response variable and the explanatory variable are transformed into their natural logarithms is better known as a(n)_____________.

A) exponential model
B) logarithmic model
C) linear model
D) log-log model
سؤال
In the model ln(y)= β0 + β1 ln(x)+ ε,the coefficient β1 is the approximate ____________________________.

A) change in E(y)when x increases by one unit
B) percentage change in E(y)when x increases by 1%
C) percentage change in E(y)when x increases by one unit
D) change in E(y)when x increases by 1%
سؤال
The following data show the demand for an airline ticket dependent on the price of this ticket. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Which of the following is the price elasticity of the demand found by the log-log model?</strong> A) 26.3660 B) −3.2577 C) 0.9852 D) 0.2071 <div style=padding-top: 35px> For the assumed cubic and log-log regression models,Demand = β0 + β1Price + β2Price2 + β3Price3 + ε and ln(Demand)= β0 + β1ln(Price)+ ε,the following regression results are available. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Which of the following is the price elasticity of the demand found by the log-log model?</strong> A) 26.3660 B) −3.2577 C) 0.9852 D) 0.2071 <div style=padding-top: 35px> Which of the following is the price elasticity of the demand found by the log-log model?

A) 26.3660
B) −3.2577
C) 0.9852
D) 0.2071
سؤال
The log-log and exponential models,ln(x)= β0 + β1ln(x)+ ε and (y)= β0 + β1x + ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit? <strong>The log-log and exponential models,ln(x)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε and (y)= β<sub>0</sub> + β<sub>1</sub>x + ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit?  </strong> A) The log-log model. B) The exponential model. C) The models are not comparable. D) The provided information is not sufficient to make the conclusion. <div style=padding-top: 35px>

A) The log-log model.
B) The exponential model.
C) The models are not comparable.
D) The provided information is not sufficient to make the conclusion.
سؤال
The quadratic and logarithmic models,y = β0 + β1x + β2x2 + ε and y = β0 + β1 ln(x)+ ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit? <strong>The quadratic and logarithmic models,y = β<sub>0</sub> + β<sub>1</sub>x + β<sub>2</sub>x<sup>2</sup> + ε and y = β<sub>0</sub> + β<sub>1</sub> ln(x)+ ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit?  </strong> A) The quadratic model. B) The logarithmic model. C) The models are not comparable. D) The provided information is not sufficient to make the conclusion. <div style=padding-top: 35px>

A) The quadratic model.
B) The logarithmic model.
C) The models are not comparable.
D) The provided information is not sufficient to make the conclusion.
سؤال
The following data show the demand for an airline ticket dependent on the price of this ticket. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Using the cubic model,which of the following is the predicted demand when the price is $200?</strong> A) 14,378.72 B) 9,201.45 C) 10,764.66 D) 12,499.98 <div style=padding-top: 35px> For the assumed cubic and log-log regression models,Demand = β0 + β1Price + β2Price2 + β3Price3 + ε and ln(Demand)= β0 + β1ln(Price)+ ε,the following regression results are available. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Using the cubic model,which of the following is the predicted demand when the price is $200?</strong> A) 14,378.72 B) 9,201.45 C) 10,764.66 D) 12,499.98 <div style=padding-top: 35px> Using the cubic model,which of the following is the predicted demand when the price is $200?

A) 14,378.72
B) 9,201.45
C) 10,764.66
D) 12,499.98
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Deck 16: Regression Models for Nonlinear Relationships
1
A quadratic regression model is a special type of a polynomial regression model.
True
2
The curve representing the regression equation The curve representing the regression equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>has a U-shape if b<sub>2 </sub>> 0. = b0 + b1x + b2x2has a U-shape if b2 > 0.
True
3
For the logarithmic model y = β0 + β1ln(x)+ ε,β1/100 is the approximate change in E(y)when x increases by 1%.
True
4
It is not very informative to start with developing a scatterplot of the response variable against the explanatory variable.
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5
The cubic regression model,y = β0 + β1x + β2x2 + β3x3 + ε,is used when we assume that the relationship between x and y should be captured by a function that has either minimum or maximum,but not both.
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6
The quadratic regression model is appropriate when the slope,capturing the influence of x on y,changes in magnitude as well as sign.
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7
The regression model ln(y)= β0 + β1 ln(x)+ ε is called logarithmic.
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8
The log-log regression model is ________ in the variables.
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9
The fit of the regression equations The fit of the regression equations   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup> and   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup> + b<sub>3</sub>x<sup>3 </sup>can be compared using the coefficient of determination R<sup>2</sup>. = b0 + b1x + b2x2 and The fit of the regression equations   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup> and   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup> + b<sub>3</sub>x<sup>3 </sup>can be compared using the coefficient of determination R<sup>2</sup>. = b0 + b1x + b2x2 + b3x3 can be compared using the coefficient of determination R2.
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10
The cubic regression model allows for two changes in ______.
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11
The fit of the models y = β0 + β1x + ε and ln(y)= β0 + β1ln(x)+ ε can be compared using the coefficients R2 found in the two corresponding Excel's regression outputs.
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12
The equation y = β0 + β1x + β2x2 + ε is called a cubic regression model.
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13
The fit of the models y = β0 + β1x + β2x2+ ε and y = β0 + β1ln(x)+ ε can be compared using the coefficient of determination R2.
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14
It is important to superimpose linear and quadratic trends on the scatterplot using ______.
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15
The regression model ln(y)= β0 + β1x + ε is called exponential.
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16
When the data are available on x and y,it is easy to estimate a polynomial regression model.
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17
For the model ln(y)= β0 + β1ln(x)+ ε with 0 < β1 < 1,if x increases than E(y)increases but at a slower rate.
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18
Many nonlinear regression models can be studied under the linear regression framework using transformation of the response variable and/or the explanatory variables.
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19
For the exponential model ln(y)= β0 + β1x + ε,β1 × 100% is the approximate percentage change in E(y)when x increases by 1%.
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20
The fit of the models y = β0 + β1x + ε and y = β0 + β1ln(x)+ ε can be compared using the coefficient of determination R2.
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21
For the quadratic equation <strong>For the quadratic equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>,which of the following expressions must be zero in order to minimize or maximize the predicted y?</strong> A) b<sub>1</sub> + 2b<sub>2</sub>x B) 2b<sub>1</sub> + b<sub>2</sub>x C) -b<sub>1</sub>/2b<sub>2</sub> D) -b<sub>2</sub>/2b<sub>2</sub> = b0 + b1x + b2x2,which of the following expressions must be zero in order to minimize or maximize the predicted y?

A) b1 + 2b2x
B) 2b1 + b2x
C) -b1/2b2
D) -b2/2b2
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22
For the quadratic regression equation <strong>For the quadratic regression equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>,the predicted y achieves its optimum (maximum or minimum)when x is _________.</strong> A) -2b<sub>2</sub>/b<sub>1</sub> B) -b<sub>1</sub>/2b<sub>2</sub> C) b<sub>1</sub>/2b<sub>2</sub> D) 2b<sub>1</sub>/b<sub>2</sub> = b0 + b1x + b2x2,the predicted y achieves its optimum (maximum or minimum)when x is _________.

A) -2b2/b1
B) -b1/2b2
C) b1/2b2
D) 2b1/b2
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23
When not all variables are transformed into logarithms the models are called _______ models.
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24
The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers. <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   Assuming that the values of Hires can be nonintegers,what is the maximum value of Productivity?</strong> A) 29.58 B) 124.603 C) 35.086 D) 127.50 Assuming that the values of Hires can be nonintegers,what is the maximum value of Productivity?

A) 29.58
B) 124.603
C) 35.086
D) 127.50
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25
The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers. <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   What is the percentage of variations in the productivity explained by the number of hired workers?</strong> A) 85.69% B) 0.7342% C) 90.54% D) 73.42% What is the percentage of variations in the productivity explained by the number of hired workers?

A) 85.69%
B) 0.7342%
C) 90.54%
D) 73.42%
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26
For the quadratic regression equation <strong>For the quadratic regression equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>,the optimum (maximum or minimum)value of   is _________.</strong> A) -b<sub>1</sub>/2b<sub>2</sub> B) b<sub>1</sub>/2b<sub>2</sub> C)   D)   = b0 + b1x + b2x2,the optimum (maximum or minimum)value of <strong>For the quadratic regression equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>,the optimum (maximum or minimum)value of   is _________.</strong> A) -b<sub>1</sub>/2b<sub>2</sub> B) b<sub>1</sub>/2b<sub>2</sub> C)   D)   is _________.

A) -b1/2b2
B) b1/2b2
C) <strong>For the quadratic regression equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>,the optimum (maximum or minimum)value of   is _________.</strong> A) -b<sub>1</sub>/2b<sub>2</sub> B) b<sub>1</sub>/2b<sub>2</sub> C)   D)
D) <strong>For the quadratic regression equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>,the optimum (maximum or minimum)value of   is _________.</strong> A) -b<sub>1</sub>/2b<sub>2</sub> B) b<sub>1</sub>/2b<sub>2</sub> C)   D)
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27
The log-log and the __________ models can allow similar shapes.
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28
Although a polynomial regression model of order two or more is nonlinear,when it is fitted to the data we use the _______ regression to make this fit.

A) nonlinear
B) logistic
C) polynomial
D) linear
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29
To compute the coefficient of determination R2 we have to use Excel's ________ function first to derive the correlation between y and To compute the coefficient of determination R<sup>2 </sup>we have to use Excel's ________ function first to derive the correlation between y and   . .
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30
Which of the following is a quadratic regression equation?

A) <strong>Which of the following is a quadratic regression equation?</strong> A)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>2</sup> B)   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>y<sup>2</sup> C)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>-2</sup> D)   = b0 + b1x-1 + b2x2
B) <strong>Which of the following is a quadratic regression equation?</strong> A)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>2</sup> B)   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>y<sup>2</sup> C)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>-2</sup> D)   = b0 + b1x + b2y2
C) <strong>Which of the following is a quadratic regression equation?</strong> A)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>2</sup> B)   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>y<sup>2</sup> C)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>-2</sup> D)   = b0 + b1x-1 + b2x-2
D) <strong>Which of the following is a quadratic regression equation?</strong> A)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>2</sup> B)   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>y<sup>2</sup> C)   = b<sub>0</sub> + b<sub>1</sub>x<sup>-1</sup> + b<sub>2</sub>x<sup>-2</sup> D)
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31
The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers. <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   For which value of Hires is the predicted Productivity maximized? Note: Do not round to the nearest integer.</strong> A) 29.58 B) 124.60 C) 35.086 D) 27.34 For which value of Hires is the predicted Productivity maximized? Note: Do not round to the nearest integer.

A) 29.58
B) 124.60
C) 35.086
D) 27.34
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32
How many coefficients need to be estimated in the quadratic regression model?

A) 4
B) 3
C) 2
D) 1
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33
What is the effect of b2 < 0 in the case of the quadratic equation <strong>What is the effect of b<sub>2</sub> < 0 in the case of the quadratic equation   = b<sub>0</sub> + b<sub>1</sub>x + b<sub>2</sub>x<sup>2</sup>?</strong> A) The curve is U-shaped. B) The curve is inverted U-shaped. C) The curve is a straight line. D) The curve is not a parabola. = b0 + b1x + b2x2?

A) The curve is U-shaped.
B) The curve is inverted U-shaped.
C) The curve is a straight line.
D) The curve is not a parabola.
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34
Which of the following regression models is not polynomial?

A) y = β0 + β1x + ε
B) y = β0 + β1x + β2 x2 + ε
C) y = β0 + β1 x-1 + ε
D) y = β0 + β1x + β2x2 + β3x3
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35
The logarithmic model is especially attractive when only the ____________ variable is better captured in percentages.
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36
An inverted U-shaped curve is also known as _______.

A) concave
B) convex
C) opaque
D) hyperbola
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37
It is important to evaluate the estimated _________ effect of the explanatory variable x on the predicted value of the response variable It is important to evaluate the estimated _________ effect of the explanatory variable x on the predicted value of the response variable   . .
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38
The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers. <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   Which of the following is the predicted productivity when 32 workers are hired?</strong> A) 124.00 B) 122.46 C) 121.60 D) 113.50 Which of the following is the predicted productivity when 32 workers are hired?

A) 124.00
B) 122.46
C) 121.60
D) 113.50
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39
If the data are available on the response variable y and the explanatory variable x,and the fit of the quadratic regression model y = β0 + β1x + β2x2 + ε is to be tested,standard linear regression can be applied on ________.

A) y and x
B) y,x,and x2
C) y,xy,and x2
D) y,y2,and x2
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40
The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers. <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   The quadratic regression equation found is _________.</strong> A)   = 35.086 + 6.0523Hires - 0.1023Hires<sup>2</sup> B)   = 6.0523 + 35.086Hires - 0.1023Hires<sup>2</sup> C)   = 6.0523 − 35.086Hires + 0.1023Hires<sup>2</sup> D)   The quadratic regression equation found is _________.

A) <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   The quadratic regression equation found is _________.</strong> A)   = 35.086 + 6.0523Hires - 0.1023Hires<sup>2</sup> B)   = 6.0523 + 35.086Hires - 0.1023Hires<sup>2</sup> C)   = 6.0523 − 35.086Hires + 0.1023Hires<sup>2</sup> D)   = 35.086 + 6.0523Hires - 0.1023Hires2
B) <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   The quadratic regression equation found is _________.</strong> A)   = 35.086 + 6.0523Hires - 0.1023Hires<sup>2</sup> B)   = 6.0523 + 35.086Hires - 0.1023Hires<sup>2</sup> C)   = 6.0523 − 35.086Hires + 0.1023Hires<sup>2</sup> D)   = 6.0523 + 35.086Hires - 0.1023Hires2
C) <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   The quadratic regression equation found is _________.</strong> A)   = 35.086 + 6.0523Hires - 0.1023Hires<sup>2</sup> B)   = 6.0523 + 35.086Hires - 0.1023Hires<sup>2</sup> C)   = 6.0523 − 35.086Hires + 0.1023Hires<sup>2</sup> D)   = 6.0523 − 35.086Hires + 0.1023Hires2
D) <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   The quadratic regression equation found is _________.</strong> A)   = 35.086 + 6.0523Hires - 0.1023Hires<sup>2</sup> B)   = 6.0523 + 35.086Hires - 0.1023Hires<sup>2</sup> C)   = 6.0523 − 35.086Hires + 0.1023Hires<sup>2</sup> D)
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41
Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   What is the number of estimated coefficients of the cubic regression model?</strong> A) 1 B) 2 C) 3 D) 4 What is the number of estimated coefficients of the cubic regression model?

A) 1
B) 2
C) 3
D) 4
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42
Typically,the sales volume declines with an increase of a product's price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product's price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   Using the quadratic equation,predict the sales if the luxury good is priced at $100.</strong> A) 1191.87 B) 1157.64 C) 1160.79 D) 1168.00 Using the quadratic equation,predict the sales if the luxury good is priced at $100.

A) 1191.87
B) 1157.64
C) 1160.79
D) 1168.00
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43
The coefficient of determination R2 cannot be used to compare the linear and quadratic models,because

A) the quadratic model has one parameter more to estimate.
B) the quadratic model has two parameters more to estimate.
C) the quadratic model always has a lower R2.
D) R2 is not defined for the quadratic model.
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44
Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   Using the cubic regression equation,predict the sales if the luxury good is priced at $100.</strong> A) 1171.85 B) 1133.10 C) 1106.61 D) 1092.91 Using the cubic regression equation,predict the sales if the luxury good is priced at $100.

A) 1171.85
B) 1133.10
C) 1106.61
D) 1092.91
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45
The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers. <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   Assuming that the number of hired workers must be an integer,what is the maximum productivity to achieve?</strong> A) 29.58 B) 30.00 C) 124.603 D) 124.585 Assuming that the number of hired workers must be an integer,what is the maximum productivity to achieve?

A) 29.58
B) 30.00
C) 124.603
D) 124.585
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46
Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   For which of the following two prices are the sales predicted by the quadratic regression equation equal 1700 units?</strong> A) 60.51 and 150.15 B) 61.51 and 151.15 C) 62.51 and 152.15 D) 63.51 and 153.15 For which of the following two prices are the sales predicted by the quadratic regression equation equal 1700 units?

A) 60.51 and 150.15
B) 61.51 and 151.15
C) 62.51 and 152.15
D) 63.51 and 153.15
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47
Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   For which of the following prices do sales predicted by the quadratic regression equation reach their minimum?</strong> A) 106.33 B) 1157.16 C) 100.41 D) 1166.64 For which of the following prices do sales predicted by the quadratic regression equation reach their minimum?

A) 106.33
B) 1157.16
C) 100.41
D) 1166.64
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48
When the predicted value of the response variable has to be found,in which of the following two models,is there a need for the standard error correction?

A) Linear and log-log
B) Log-log and logarithmic
C) Logarithmic and linear
D) Log-log and exponential
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49
For which of the following models,the formula <strong>For which of the following models,the formula   for finding the predicted value of y is used?</strong> A)   B)   C)   D)   for finding the predicted value of y is used?

A) <strong>For which of the following models,the formula   for finding the predicted value of y is used?</strong> A)   B)   C)   D)
B) <strong>For which of the following models,the formula   for finding the predicted value of y is used?</strong> A)   B)   C)   D)
C) <strong>For which of the following models,the formula   for finding the predicted value of y is used?</strong> A)   B)   C)   D)
D) <strong>For which of the following models,the formula   for finding the predicted value of y is used?</strong> A)   B)   C)   D)
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50
Given the data on y and x,what is needed to run Excel regression for the polynomial model of order 3?

A) Creating the values of one pseudo-explanatory variable by squaring the values of x.
B) Creating the values of two pseudo-explanatory variables by squaring and cubing the values of x,respectively.
C) Creating the values of three pseudo-explanatory variables by raising the values of x to the power of 2,3,and 4,respectively.
D) Nothing is needed.
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51
Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   For the considered range of the price,the relationship between Price and Sales should be described by a _________.</strong> A) concave function B) hyperbola C) convex function D) linear function For the considered range of the price,the relationship between Price and Sales should be described by a _________.

A) concave function
B) hyperbola
C) convex function
D) linear function
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52
What does a positive value for price elasticity indicate if y represents the quantity demanded of a particular good and x is its unit price in a log-log regression model?

A) As price increases,the expected sales decreases.
B) As price decreases,the expected sales increases.
C) As price increases,the expected sales increases.
D) As price decreases,the expected sales remain the same.
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53
Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   What can be said about the linear relationship between Price and Sales?</strong> A) The relationship is negatively moderate. B) There is no relationship. C) The relationship is positively strong. D) The relationship is negatively strong. What can be said about the linear relationship between Price and Sales?

A) The relationship is negatively moderate.
B) There is no relationship.
C) The relationship is positively strong.
D) The relationship is negatively strong.
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54
For the logarithmic model ln(y)= β0 + β1ln(x)+ ε,the predicted value of y is computed by _______________.

A) <strong>For the logarithmic model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by _______________.</strong> A)   B)   C)   D)
B) <strong>For the logarithmic model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by _______________.</strong> A)   B)   C)   D)
C) <strong>For the logarithmic model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by _______________.</strong> A)   B)   C)   D)
D) <strong>For the logarithmic model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by _______________.</strong> A)   B)   C)   D)
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55
For the log-log model ln(y)= β0 + β1ln(x)+ ε,the predicted value of y is computed by ________________.

A) <strong>For the log-log model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by ________________.</strong> A)   B)   C)   D)
B) <strong>For the log-log model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by ________________.</strong> A)   B)   C)   D)
C) <strong>For the log-log model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by ________________.</strong> A)   B)   C)   D)
D) <strong>For the log-log model ln(y)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε,the predicted value of y is computed by ________________.</strong> A)   B)   C)   D)
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56
Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship. <strong>Typically,the sales volume declines with an increase of a product price.It has been observed,however,that for some luxury goods the sales volume may increase when the price increases.The following Excel output illustrates this rather unusual relationship.   Which of the following models is most likely to be chosen in order to describe the relationship between Price and Sales?</strong> A) Linear B) Quadratic C) Cubic D) Exponential Which of the following models is most likely to be chosen in order to describe the relationship between Price and Sales?

A) Linear
B) Quadratic
C) Cubic
D) Exponential
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57
For the exponential model ln(y)= β0 + β1x + ε ,if x increases by one unit,then E(y)changes by approximately ____________.

A) β1×100%
B) β1×100 units
C) β1%
D) β1units
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58
A model in which the response variable is transformed into its natural logarithm is called a(n)______________.

A) log-log model
B) logarithmic model
C) exponential model
D) linear model
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59
The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers. <strong>The following Excel scatterplot with the fitted quadratic regression equation illustrates the observed relationship between productivity and the number of hired workers.   Assuming that the number of hired workers must be integer,how many workers should be hired to achieve the highest productivity?</strong> A) 26 B) 28 C) 30 D) 32 Assuming that the number of hired workers must be integer,how many workers should be hired to achieve the highest productivity?

A) 26
B) 28
C) 30
D) 32
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60
A model with one explanatory variable being the only one transformed into its natural logarithm is called a(n)___________.

A) log-log model
B) logarithmic model
C) exponential model
D) linear model
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61
The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height. <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     If the age of a tree increases by 1%,then its predicted height increases by approximately _________.</strong> A) 6.1082% B) 0.06108% C) 6.1082 feet D) 0.061082 feet <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     If the age of a tree increases by 1%,then its predicted height increases by approximately _________.</strong> A) 6.1082% B) 0.06108% C) 6.1082 feet D) 0.061082 feet If the age of a tree increases by 1%,then its predicted height increases by approximately _________.

A) 6.1082%
B) 0.06108%
C) 6.1082 feet
D) 0.061082 feet
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62
The following data show the demand for an airline ticket dependent on the price of this ticket. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Assuming that the sample correlation coefficient between Demand and   = exp(26.3660 - 3.2577 ln(Price)+ (0.2071)<sup>2</sup>/2)is 0.956,what is the percentage of variations in Demand explained by the log-log regression equation?</strong> A) 98.52% B) 98.50% C) 91.39% D) 97.93% For the assumed cubic and log-log regression models,Demand = β0 + β1Price + β2Price2 + β3Price3 + ε and ln(Demand)= β0 + β1ln(Price)+ ε,the following regression results are available. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Assuming that the sample correlation coefficient between Demand and   = exp(26.3660 - 3.2577 ln(Price)+ (0.2071)<sup>2</sup>/2)is 0.956,what is the percentage of variations in Demand explained by the log-log regression equation?</strong> A) 98.52% B) 98.50% C) 91.39% D) 97.93% Assuming that the sample correlation coefficient between Demand and <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Assuming that the sample correlation coefficient between Demand and   = exp(26.3660 - 3.2577 ln(Price)+ (0.2071)<sup>2</sup>/2)is 0.956,what is the percentage of variations in Demand explained by the log-log regression equation?</strong> A) 98.52% B) 98.50% C) 91.39% D) 97.93% = exp(26.3660 - 3.2577 ln(Price)+ (0.2071)2/2)is 0.956,what is the percentage of variations in Demand explained by the log-log regression equation?

A) 98.52%
B) 98.50%
C) 91.39%
D) 97.93%
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63
The following data show the demand for an airline ticket dependent on the price of this ticket. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Which of the following does the slope of the obtained log-log regression equation   = 26.3660 - 3.2577 ln(Price)signify?</strong> A) For every 1% increase in the price,the predicted demand declines by approximately 3.2577%. B) For every 1% increase in the demand,the expected price increases by approximately 3.2577%. C) For every 1% increase in the demand,the expected price decreases by approximately 3.2577%. D) For every 1% increase in the price,the predicted demand increases by approximately 3.2577%. For the assumed cubic and log-log regression models,Demand = β0 + β1Price + β2Price2 + β3Price3 + ε and ln(Demand)= β0 + β1ln(Price)+ ε,the following regression results are available. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Which of the following does the slope of the obtained log-log regression equation   = 26.3660 - 3.2577 ln(Price)signify?</strong> A) For every 1% increase in the price,the predicted demand declines by approximately 3.2577%. B) For every 1% increase in the demand,the expected price increases by approximately 3.2577%. C) For every 1% increase in the demand,the expected price decreases by approximately 3.2577%. D) For every 1% increase in the price,the predicted demand increases by approximately 3.2577%. Which of the following does the slope of the obtained log-log regression equation <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Which of the following does the slope of the obtained log-log regression equation   = 26.3660 - 3.2577 ln(Price)signify?</strong> A) For every 1% increase in the price,the predicted demand declines by approximately 3.2577%. B) For every 1% increase in the demand,the expected price increases by approximately 3.2577%. C) For every 1% increase in the demand,the expected price decreases by approximately 3.2577%. D) For every 1% increase in the price,the predicted demand increases by approximately 3.2577%. = 26.3660 - 3.2577 ln(Price)signify?

A) For every 1% increase in the price,the predicted demand declines by approximately 3.2577%.
B) For every 1% increase in the demand,the expected price increases by approximately 3.2577%.
C) For every 1% increase in the demand,the expected price decreases by approximately 3.2577%.
D) For every 1% increase in the price,the predicted demand increases by approximately 3.2577%.
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64
The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height. <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     What is the regression model used to describe the relationship between Height and Age?</strong> A) Exponential model B) Logarithmic model C) Linear model D) Log-log model <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     What is the regression model used to describe the relationship between Height and Age?</strong> A) Exponential model B) Logarithmic model C) Linear model D) Log-log model What is the regression model used to describe the relationship between Height and Age?

A) Exponential model
B) Logarithmic model
C) Linear model
D) Log-log model
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65
The following data show the demand for an airline ticket dependent on the price of this ticket. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Using the log-log model,which of the following is the predicted demand when the price is $200?</strong> A) 10,874.92 B) 9,201.45 C) 7,849.25 D) 12,499.98 For the assumed cubic and log-log regression models,Demand = β0 + β1Price + β2Price2 + β3Price3 + ε and ln(Demand)= β0 + β1ln(Price)+ ε,the following regression results are available. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Using the log-log model,which of the following is the predicted demand when the price is $200?</strong> A) 10,874.92 B) 9,201.45 C) 7,849.25 D) 12,499.98 Using the log-log model,which of the following is the predicted demand when the price is $200?

A) 10,874.92
B) 9,201.45
C) 7,849.25
D) 12,499.98
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66
The logarithmic and log-log models,y = β0 + β1ln(x)+ ε and ln(y)= β0 + β1 ln(x)+ ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit? <strong>The logarithmic and log-log models,y = β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε and ln(y)= β<sub>0</sub> + β<sub>1</sub> ln(x)+ ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit?  </strong> A) The logarithmic model. B) The log-log model. C) The models are not comparable. D) The provided information is not sufficient to make the conclusion.

A) The logarithmic model.
B) The log-log model.
C) The models are not comparable.
D) The provided information is not sufficient to make the conclusion.
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67
The following data show the demand for an airline ticket dependent on the price of this ticket. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Which of the following is the percentage of variations in ln(Demand)explained by the log-log regression equation?</strong> A) 98.52% B) 98.50% C) 91.39% D) 97.93% For the assumed cubic and log-log regression models,Demand = β0 + β1Price + β2Price2 + β3Price3 + ε and ln(Demand)= β0 + β1ln(Price)+ ε,the following regression results are available. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Which of the following is the percentage of variations in ln(Demand)explained by the log-log regression equation?</strong> A) 98.52% B) 98.50% C) 91.39% D) 97.93% Which of the following is the percentage of variations in ln(Demand)explained by the log-log regression equation?

A) 98.52%
B) 98.50%
C) 91.39%
D) 97.93%
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68
Which of the following regression models is most likely to provide the best fit for the data represented by the following scatterplot? <strong>Which of the following regression models is most likely to provide the best fit for the data represented by the following scatterplot?  </strong> A) Exponential model B) Logarithmic model C) Linear model D) Log-log model

A) Exponential model
B) Logarithmic model
C) Linear model
D) Log-log model
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69
The linear and logarithmic models,y = β0 + β1x + ε and y = β0 + β1 ln(x)+ ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit? <strong>The linear and logarithmic models,y = β<sub>0</sub> + β<sub>1</sub>x + ε and y = β<sub>0</sub> + β<sub>1</sub> ln(x)+ ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit?  </strong> A) The linear model. B) The logarithmic model. C) The models are not comparable. D) The provided information is not sufficient to make the conclusion.

A) The linear model.
B) The logarithmic model.
C) The models are not comparable.
D) The provided information is not sufficient to make the conclusion.
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70
The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height. <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     If a cherry tree is planted as a one-year-old and six-foot-tall tree,which of the following is the estimated time needed by the tree to reach 16.5 feet in height?</strong> A) About 4 years B) About 4.5 years C) About 5 years D) About 5.5 years <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     If a cherry tree is planted as a one-year-old and six-foot-tall tree,which of the following is the estimated time needed by the tree to reach 16.5 feet in height?</strong> A) About 4 years B) About 4.5 years C) About 5 years D) About 5.5 years If a cherry tree is planted as a one-year-old and six-foot-tall tree,which of the following is the estimated time needed by the tree to reach 16.5 feet in height?

A) About 4 years
B) About 4.5 years
C) About 5 years
D) About 5.5 years
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71
The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height. <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     Which of the following is the predicted height of an eight-year-old cherry tree that was planted as a one-year-old and six-foot-tall tree?</strong> A) 54.96 B) 42.66 C) 17.04 D) 18.80 <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     Which of the following is the predicted height of an eight-year-old cherry tree that was planted as a one-year-old and six-foot-tall tree?</strong> A) 54.96 B) 42.66 C) 17.04 D) 18.80 Which of the following is the predicted height of an eight-year-old cherry tree that was planted as a one-year-old and six-foot-tall tree?

A) 54.96
B) 42.66
C) 17.04
D) 18.80
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72
Which of the following regression models is most likely to provide the best fit for the data represented by the following scatterplot? <strong>Which of the following regression models is most likely to provide the best fit for the data represented by the following scatterplot?  </strong> A) Exponential model B) Logarithmic model C) Linear model D) Log-log model

A) Exponential model
B) Logarithmic model
C) Linear model
D) Log-log model
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73
The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height. <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     The 98.63% of the variations in Height is explained by _______.</strong> A) Height B) Age C) ln(Age) D) ln(Height) <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     The 98.63% of the variations in Height is explained by _______.</strong> A) Height B) Age C) ln(Age) D) ln(Height) The 98.63% of the variations in Height is explained by _______.

A) Height
B) Age
C) ln(Age)
D) ln(Height)
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74
The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height. <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     Which of the following is the correlation coefficient between Height and ln(Age)?</strong> A) −0.9863 B) 0.9863 C) −0.9931 D) 0.9931 <strong>The following data,with the corresponding Excel scatterplot,show the average growth rate of Weeping Higan cherry trees planted in Washington,DC.At the time of planting,the trees were one year old and were all six feet in height.     Which of the following is the correlation coefficient between Height and ln(Age)?</strong> A) −0.9863 B) 0.9863 C) −0.9931 D) 0.9931 Which of the following is the correlation coefficient between Height and ln(Age)?

A) −0.9863
B) 0.9863
C) −0.9931
D) 0.9931
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A model in which both the response variable and the explanatory variable are transformed into their natural logarithms is better known as a(n)_____________.

A) exponential model
B) logarithmic model
C) linear model
D) log-log model
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76
In the model ln(y)= β0 + β1 ln(x)+ ε,the coefficient β1 is the approximate ____________________________.

A) change in E(y)when x increases by one unit
B) percentage change in E(y)when x increases by 1%
C) percentage change in E(y)when x increases by one unit
D) change in E(y)when x increases by 1%
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77
The following data show the demand for an airline ticket dependent on the price of this ticket. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Which of the following is the price elasticity of the demand found by the log-log model?</strong> A) 26.3660 B) −3.2577 C) 0.9852 D) 0.2071 For the assumed cubic and log-log regression models,Demand = β0 + β1Price + β2Price2 + β3Price3 + ε and ln(Demand)= β0 + β1ln(Price)+ ε,the following regression results are available. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Which of the following is the price elasticity of the demand found by the log-log model?</strong> A) 26.3660 B) −3.2577 C) 0.9852 D) 0.2071 Which of the following is the price elasticity of the demand found by the log-log model?

A) 26.3660
B) −3.2577
C) 0.9852
D) 0.2071
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78
The log-log and exponential models,ln(x)= β0 + β1ln(x)+ ε and (y)= β0 + β1x + ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit? <strong>The log-log and exponential models,ln(x)= β<sub>0</sub> + β<sub>1</sub>ln(x)+ ε and (y)= β<sub>0</sub> + β<sub>1</sub>x + ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit?  </strong> A) The log-log model. B) The exponential model. C) The models are not comparable. D) The provided information is not sufficient to make the conclusion.

A) The log-log model.
B) The exponential model.
C) The models are not comparable.
D) The provided information is not sufficient to make the conclusion.
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79
The quadratic and logarithmic models,y = β0 + β1x + β2x2 + ε and y = β0 + β1 ln(x)+ ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit? <strong>The quadratic and logarithmic models,y = β<sub>0</sub> + β<sub>1</sub>x + β<sub>2</sub>x<sup>2</sup> + ε and y = β<sub>0</sub> + β<sub>1</sub> ln(x)+ ε,were used to fit given data on y and x,and the following table summarizes the regression results.Which of the two models provides a better fit?  </strong> A) The quadratic model. B) The logarithmic model. C) The models are not comparable. D) The provided information is not sufficient to make the conclusion.

A) The quadratic model.
B) The logarithmic model.
C) The models are not comparable.
D) The provided information is not sufficient to make the conclusion.
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The following data show the demand for an airline ticket dependent on the price of this ticket. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Using the cubic model,which of the following is the predicted demand when the price is $200?</strong> A) 14,378.72 B) 9,201.45 C) 10,764.66 D) 12,499.98 For the assumed cubic and log-log regression models,Demand = β0 + β1Price + β2Price2 + β3Price3 + ε and ln(Demand)= β0 + β1ln(Price)+ ε,the following regression results are available. <strong>The following data show the demand for an airline ticket dependent on the price of this ticket.   For the assumed cubic and log-log regression models,Demand = β<sub>0</sub> + β<sub>1</sub>Price + β<sub>2</sub>Price<sup>2 </sup>+ β<sub>3</sub>Price<sup>3 </sup>+ ε and ln(Demand)= β<sub>0</sub> + β<sub>1</sub>ln(Price)+ ε,the following regression results are available.   Using the cubic model,which of the following is the predicted demand when the price is $200?</strong> A) 14,378.72 B) 9,201.45 C) 10,764.66 D) 12,499.98 Using the cubic model,which of the following is the predicted demand when the price is $200?

A) 14,378.72
B) 9,201.45
C) 10,764.66
D) 12,499.98
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