Deck 17: Multiple Regression

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سؤال
In order to test the significance of a multiple regression model involving 4 independent variables and 25 observations, the numerator and denominator degrees of freedom for the critical value of F are 3 and 21, respectively.
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سؤال
In multiple regression, the standard error of estimate is defined by In multiple regression, the standard error of estimate is defined by   , where n is the sample size and k is the number of independent variables.<div style=padding-top: 35px> , where n is the sample size and k is the number of independent variables.
سؤال
Most statistical software print a second R2 statistic, called the coefficient of determination adjusted for degrees of freedom, which has been adjusted to take into account the sample size and the number of independent variables.
سؤال
When an additional explanatory variable is introduced into a multiple regression model, the coefficient of determination will never decrease.
سؤال
In reference to the equation In reference to the equation   , the value 0.12 is the average change in y per unit change in x<sub>1</sub>, when x<sub>2</sub> is held constant.<div style=padding-top: 35px> , the value 0.12 is the average change in y per unit change in x1, when x2 is held constant.
سؤال
A multiple regression is called "multiple" because it has several explanatory variables.
سؤال
In a multiple regression analysis involving 50 observations and 5 independent variables, the total variation in y is 475 and SSE = 71.25.Then, the coefficient of determination is 0.85.
سؤال
In multiple regression analysis, the adjusted coefficient of determination is adjusted for the number of independent variables and the sample size.
سؤال
A multiple regression equation has a coefficient of determination of 0.81.Then, the percentage of the variation in y that is explained by the regression equation is 90%.
سؤال
A multiple regression model is assessed to be good if the error sum of squares SSE and the standard error of estimate A multiple regression model is assessed to be good if the error sum of squares SSE and the standard error of estimate  are both small, the coefficient of determination R<sup>2</sup> is close to 1, and the value of the test statistic F is large.<div style=padding-top: 35px> are both small, the coefficient of determination R2 is close to 1, and the value of the test statistic F is large.
سؤال
In multiple regression analysis, when the response surface (the graphical depiction of the regression equation) hits every single point, the sum of squares for error SSE = 0, the standard error of estimate sIn multiple regression analysis, when the response surface (the graphical depiction of the regression equation) hits every single point, the sum of squares for error SSE = 0, the standard error of estimate s  = 0, and the coefficient of determination R<sup>2</sup> = 1.<div style=padding-top: 35px> = 0, and the coefficient of determination R2 = 1.
سؤال
In reference to the equation In reference to the equation   , the value 0.60 is the average change in y per unit change in x<sub>2</sub>, regardless of the value of x<sub>1</sub>.<div style=padding-top: 35px> , the value 0.60 is the average change in y per unit change in x2, regardless of the value of x1.
سؤال
In regression analysis, the total variation in the dependent variable y, measured by In regression analysis, the total variation in the dependent variable y, measured by   , can be decomposed into two parts: the explained variation, measured by SSR, and the unexplained variation, measured by SSE.<div style=padding-top: 35px> , can be decomposed into two parts: the explained variation, measured by SSR, and the unexplained variation, measured by SSE.
سؤال
In testing the significance of a multiple regression model with three independent variables, the null hypothesis is In testing the significance of a multiple regression model with three independent variables, the null hypothesis is   .<div style=padding-top: 35px> .
سؤال
In reference to the equation In reference to the equation   , the value -0.80 is the y-intercept.<div style=padding-top: 35px> , the value -0.80 is the y-intercept.
سؤال
In a multiple regression analysis involving 4 independent variables and 30 data points, the number of degrees of freedom associated with the sum of squares for error, SSE, is 25.
سؤال
The coefficient of determination R2 measures the proportion of variation in y that is explained by the explanatory variables included in the model.
سؤال
A small value of F indicates that most of the variation in y is explained by the regression equation and that the model is useful.
سؤال
A multiple regression model involves 40 observations and 4 independent variables produces a total variation in y of 100,000 and SSR = 80,400.Then, the value of MSE is 560.
سؤال
When an additional explanatory variable is introduced into a multiple regression model, coefficient of determination adjusted for degrees of freedom can never decrease.
سؤال
A multiple regression model involves 5 independent variables and a sample of 10 data points.If we want to test the validity of the model at the 5% significance level, the critical value is:

A) 6.26
B) 3.33
C) 9.36
D) 4.24
سؤال
In a multiple regression analysis involving 6 independent variables, the total variation in y is 900 and SSR = 600.What is the value of SSE?

A) 300
B) 1.50
C) 0.67
D) None of these choices.
سؤال
In a multiple regression analysis involving k independent variables and n data points, the number of degrees of freedom associated with the sum of squares for error is:

A) k - 1
B) n - k
C) n - 1
D) n - k - 1
سؤال
From the coefficient of determination, we cannot detect the strength of the relationship between the dependent variable y and any individual independent variable.
سؤال
A multiple regression model has the form <strong>A multiple regression model has the form   .As x<sub>3</sub> increases by one unit, with x<sub>1</sub> and x<sub>2</sub> held constant, the y on average is expected to:</strong> A) increase by 1 unit. B) increase by 12 units. C) decrease by 4 units. D) decrease by 16 units. <div style=padding-top: 35px> .As x3 increases by one unit, with x1 and x2 held constant, the y on average is expected to:

A) increase by 1 unit.
B) increase by 12 units.
C) decrease by 4 units.
D) decrease by 16 units.
سؤال
In multiple regression analysis, the ratio MSR/MSE yields the:

A) t-test statistic for testing each individual regression coefficient.
B) F-test statistic for testing the validity of the regression equation.
C) coefficient of determination.
D) adjusted coefficient of determination.
سؤال
Suppose a multiple regression analysis involving 25 data points has <strong>Suppose a multiple regression analysis involving 25 data points has   and SSE = 36.Then, the number of the independent variables must be:</strong> A) 3 B) 4 C) 5 D) 6 <div style=padding-top: 35px> and SSE = 36.Then, the number of the independent variables must be:

A) 3
B) 4
C) 5
D) 6
سؤال
A multiple regression model has the form: <strong>A multiple regression model has the form:   .As x<sub>2</sub> increases by one unit, holding x<sub>1</sub> constant, then the value of y will increase by:</strong> A) 7.25 units B) 6 units on average C) 2 units D) None of these choices <div style=padding-top: 35px> .As x2 increases by one unit, holding x1 constant, then the value of y will increase by:

A) 7.25 units
B) 6 units on average
C) 2 units
D) None of these choices
سؤال
When an explanatory variable is dropped from a multiple regression model, the adjusted coefficient of determination can increase.
سؤال
In calculating the standard error of the estimate, In calculating the standard error of the estimate,   , there are (n - k-1) degrees of freedom, where n is the sample size and k is the number of independent variables in the model.<div style=padding-top: 35px> , there are (n - k-1) degrees of freedom, where n is the sample size and k is the number of independent variables in the model.
سؤال
In a multiple regression analysis, if the model provides a poor fit, this indicates that:

A) the coefficient of determination will be close to zero.
B) the standard error of estimate will be large.
C) the sum of squares for error will be large.
D) All of these choices are true.
سؤال
In a multiple regression model, the mean of the probability distribution of the error variable <strong>In a multiple regression model, the mean of the probability distribution of the error variable  is assumed to be:</strong> A) k, where k is the number of independent variables included in the model. B) 1.0 C) 0.0 D) None of these choices. <div style=padding-top: 35px> is assumed to be:

A) k, where k is the number of independent variables included in the model.
B) 1.0
C) 0.0
D) None of these choices.
سؤال
The total variation in y in a regression model will never exceed the regression sum of squares (SSR).
سؤال
The adjusted coefficient of determination is adjusted for the:

A) number of independent variables and the sample size.
B) number of dependent variables and the sample size.
C) coefficient of correlation and the significance level.
D) number of regression parameters including the y-intercept.
سؤال
A multiple regression model is assessed to be poor if the error sum of squares SSE and the standard error of estimate A multiple regression model is assessed to be poor if the error sum of squares SSE and the standard error of estimate  are both large, the coefficient of determination R<sup>2</sup> is close to 0, and the value of the test statistic F is large.<div style=padding-top: 35px> are both large, the coefficient of determination R2 is close to 0, and the value of the test statistic F is large.
سؤال
When an explanatory variable is dropped from a multiple regression model, the coefficient of determination can increase.
سؤال
In order to test the validity of a multiple regression model involving 5 independent variables and 30 observations, the numerator and denominator degrees of freedom for the critical value of F are, respectively,

A) 5 and 30
B) 6 and 29
C) 5 and 24
D) 6 and 25
سؤال
A multiple regression model has the form A multiple regression model has the form   .The coefficient b<sub>1</sub> is interpreted as the average change in y per unit change in x<sub>1</sub>.<div style=padding-top: 35px> .The coefficient b1 is interpreted as the average change in y per unit change in x1.
سؤال
A high value of the coefficient of determination significantly above 0 in multiple regression, accompanied by insignificant t-statistics on all parameter estimates, very often indicates a high correlation between independent variables in the model.
سؤال
A multiple regression model involves 10 independent variables and 30 observations.If we want to test at the 5% significance level whether one of the coefficients is = 0 (vs. \neq 0) the critical value will be:

A) 2.228
B) 2.093
C) 1.729
D) 1.697
سؤال
For the multiple regression model: <strong>For the multiple regression model:   , if x<sub>2</sub> were to increase by 5, holding x<sub>1</sub> and x<sub>3</sub> constant, the value of y will:</strong> A) increase by 5. B) increase by 75. C) decrease on average by 5. D) decrease on average by 75. <div style=padding-top: 35px> , if x2 were to increase by 5, holding x1 and x3 constant, the value of y will:

A) increase by 5.
B) increase by 75.
C) decrease on average by 5.
D) decrease on average by 75.
سؤال
A multiple regression analysis involving three independent variables and 25 data points results in a value of 0.769 for the unadjusted coefficient of determination.Then, the adjusted coefficient of determination is:

A) 0.385
B) 0.877
C) 0.591
D) 0.736
سؤال
In a multiple regression model, the value of the coefficient of determination has to fall between

A) - and +1.
B) 0 and +1.
C)-1 and 0.
D) None of these choices.
سؤال
A multiple regression model has the form A multiple regression model has the form   .The coefficient b<sub>1</sub> is interpreted as the change in the average value of y per unit change in ________ holding ________ constant.<div style=padding-top: 35px> .The coefficient b1 is interpreted as the change in the average value of y per unit change in ________ holding ________ constant.
سؤال
For a multiple regression model the following statistics are given: Total variation in y = 250, SSE = 50, k = 4, and n = 20.Then, the coefficient of determination adjusted for the degrees of freedom is:

A) 0.800
B) 0.747
C) 0.840
D) 0.775
سؤال
In a multiple regression model, the error variable <strong>In a multiple regression model, the error variable   is assumed to have a mean of:</strong> A)-1.0 B) 0.0 C) 1.0 D) None of these choices. <div style=padding-top: 35px> is assumed to have a mean of:

A)-1.0
B) 0.0
C) 1.0
D) None of these choices.
سؤال
A multiple regression equation includes 5 independent variables, and the coefficient of determination is 0.81.The percentage of the variation in y that is explained by the regression equation is:

A) 81%
B) 90%
C) 86%
D) about 16%
سؤال
For a multiple regression model, the total variation in y can be expressed as:

A) SSE - SSR.
B) SSR - SSE.
C) SSR + SSE.
D) SSR / SSE.
سؤال
The coefficient of determination ____________________ for degrees of freedom takes into account the sample size and the number of independent variables when assessing model fit.
سؤال
In a multiple regression model, the probability distribution of the error variable <strong>In a multiple regression model, the probability distribution of the error variable   is assumed to be:</strong> A) normal. B) non-normal. C) positively skewed. D) negatively skewed. <div style=padding-top: 35px> is assumed to be:

A) normal.
B) non-normal.
C) positively skewed.
D) negatively skewed.
سؤال
Multiple regression has four requirements for the error variable.One is that the probability distribution of the error variable is ____________________.
سؤال
In a multiple regression model, the following statistics are given: SSE = 100, R2 = 0.995, k = 5, and n = 15.Then, the coefficient of determination adjusted for degrees of freedom is:

A) 0.992
B) 0.900
C) 0.955
D) 0.855
سؤال
In a multiple regression analysis, there are 20 data points and 4 independent variables, and the sum of the squared differences between observed and predicted values of y is 180.The standard error of estimate will be:

A) 9.000
B) 6.708
C) 3.464
D) 3.000
سؤال
To test the validity of a multiple regression model, we test the null hypothesis that the regression coefficients are all zero by applying the:

A) F-test
B) t-test
C) z-test
D) None of these choices.
سؤال
In a multiple regression analysis involving 40 observations and 5 independent variables, the following statistics are given: Total variation in y = 350 and SSE = 50.Then, the coefficient of determination is:

A) 0.8408
B) 0.8571
C) 0.8469
D) 0.8529
سؤال
The coefficient of determination ranges from:

A) 1.0 to \infty .
B) 0.0 to 1.0.
C) 1.0 to k, where k is the number of independent variables in the model.
D) 1.0 to n, where n is the number of observations in the dependent variable.
سؤال
For the following multiple regression model: <strong>For the following multiple regression model:   , a unit increase in x<sub>1</sub>, holding x<sub>2</sub> and x<sub>3</sub> constant, results in:</strong> A) a decrease of 3 units on average in the value of y. B) an increase of 8 units in the value of y. C) an increase of 3 units on average in the value of y. D) None of these choices. <div style=padding-top: 35px> , a unit increase in x1, holding x2 and x3 constant, results in:

A) a decrease of 3 units on average in the value of y.
B) an increase of 8 units in the value of y.
C) an increase of 3 units on average in the value of y.
D) None of these choices.
سؤال
For a multiple regression model, the following statistics are given: Total variation in y = 500, SSE = 80, and n = 25.Then, the coefficient of determination is:

A) 0.84
B) 0.16
C) 0.3125
D) 0.05
سؤال
In testing the validity of a multiple regression model in which there are four independent variables, the null hypothesis is:

A) <strong>In testing the validity of a multiple regression model in which there are four independent variables, the null hypothesis is:</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
B) <strong>In testing the validity of a multiple regression model in which there are four independent variables, the null hypothesis is:</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
C) <strong>In testing the validity of a multiple regression model in which there are four independent variables, the null hypothesis is:</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
D) <strong>In testing the validity of a multiple regression model in which there are four independent variables, the null hypothesis is:</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
سؤال
A multiple regression model has:

A) only one independent variable.
B) only two independent variables.
C) more than one dependent variable.
D) more than one independent variable.
سؤال
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} What is the adjusted coefficient of determination in this situation? What does this statistic tell you?<div style=padding-top: 35px> Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} What is the adjusted coefficient of determination in this situation? What does this statistic tell you?<div style=padding-top: 35px> ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} What is the adjusted coefficient of determination in this situation? What does this statistic tell you?<div style=padding-top: 35px>

-{Life Expectancy Narrative} What is the adjusted coefficient of determination in this situation? What does this statistic tell you?
سؤال
When there is more than one independent variable in a regression model, we refer to the graphical depiction of the equation as a(n) ____________________ rather than as a straight line.
سؤال
Student's Final Grade
A statistics professor investigated some of the factors that affect an individual student's final grade in her course.She proposed the multiple regression model Student's Final Grade A statistics professor investigated some of the factors that affect an individual student's final grade in her course.She proposed the multiple regression model   , where y is the final grade (out of 100 points), x<sub>1</sub> is the number of lectures skipped, x<sub>2</sub> is the number of late assignments, and x<sub>3</sub> is the midterm exam score (out of 100).The professor recorded the data for 50 randomly selected students.The computer output is shown below. THE REGRESSION EQUATION IS       ANALYSIS OF VARIANCE   {Student's Final Grade Narrative} What is the coefficient of determination? What does this statistic tell you?<div style=padding-top: 35px> , where y is the final grade (out of 100 points), x1 is the number of lectures skipped, x2 is the number of late assignments, and x3 is the midterm exam score (out of 100).The professor recorded the data for 50 randomly selected students.The computer output is shown below.
THE REGRESSION EQUATION IS Student's Final Grade A statistics professor investigated some of the factors that affect an individual student's final grade in her course.She proposed the multiple regression model   , where y is the final grade (out of 100 points), x<sub>1</sub> is the number of lectures skipped, x<sub>2</sub> is the number of late assignments, and x<sub>3</sub> is the midterm exam score (out of 100).The professor recorded the data for 50 randomly selected students.The computer output is shown below. THE REGRESSION EQUATION IS       ANALYSIS OF VARIANCE   {Student's Final Grade Narrative} What is the coefficient of determination? What does this statistic tell you?<div style=padding-top: 35px> Student's Final Grade A statistics professor investigated some of the factors that affect an individual student's final grade in her course.She proposed the multiple regression model   , where y is the final grade (out of 100 points), x<sub>1</sub> is the number of lectures skipped, x<sub>2</sub> is the number of late assignments, and x<sub>3</sub> is the midterm exam score (out of 100).The professor recorded the data for 50 randomly selected students.The computer output is shown below. THE REGRESSION EQUATION IS       ANALYSIS OF VARIANCE   {Student's Final Grade Narrative} What is the coefficient of determination? What does this statistic tell you?<div style=padding-top: 35px> Student's Final Grade A statistics professor investigated some of the factors that affect an individual student's final grade in her course.She proposed the multiple regression model   , where y is the final grade (out of 100 points), x<sub>1</sub> is the number of lectures skipped, x<sub>2</sub> is the number of late assignments, and x<sub>3</sub> is the midterm exam score (out of 100).The professor recorded the data for 50 randomly selected students.The computer output is shown below. THE REGRESSION EQUATION IS       ANALYSIS OF VARIANCE   {Student's Final Grade Narrative} What is the coefficient of determination? What does this statistic tell you?<div style=padding-top: 35px> ANALYSIS OF VARIANCE
Student's Final Grade A statistics professor investigated some of the factors that affect an individual student's final grade in her course.She proposed the multiple regression model   , where y is the final grade (out of 100 points), x<sub>1</sub> is the number of lectures skipped, x<sub>2</sub> is the number of late assignments, and x<sub>3</sub> is the midterm exam score (out of 100).The professor recorded the data for 50 randomly selected students.The computer output is shown below. THE REGRESSION EQUATION IS       ANALYSIS OF VARIANCE   {Student's Final Grade Narrative} What is the coefficient of determination? What does this statistic tell you?<div style=padding-top: 35px>
{Student's Final Grade Narrative} What is the coefficient of determination? What does this statistic tell you?
سؤال
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the model is useful in predicting length of life?<div style=padding-top: 35px> Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the model is useful in predicting length of life?<div style=padding-top: 35px> ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the model is useful in predicting length of life?<div style=padding-top: 35px>

-{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the model is useful in predicting length of life?
سؤال
Some of the requirements for the error variable in a multiple regression model are that the standard deviation is a(n) ____________________ and the errors are ____________________.
سؤال
Some of the requirements for the error variable in a multiple regression model are that the probability distribution is ____________________ with a mean of ____________________.
سؤال
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>3</sub>.<div style=padding-top: 35px> Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>3</sub>.<div style=padding-top: 35px> ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>3</sub>.<div style=padding-top: 35px>

-{Life Expectancy Narrative} Interpret the coefficient b3.
سؤال
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} What is the coefficient of determination? What does this statistic tell you?<div style=padding-top: 35px> Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} What is the coefficient of determination? What does this statistic tell you?<div style=padding-top: 35px> ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} What is the coefficient of determination? What does this statistic tell you?<div style=padding-top: 35px>

-{Life Expectancy Narrative} What is the coefficient of determination? What does this statistic tell you?
سؤال
We test an individual coefficient in a multiple regression model using a(n) _________ test.
سؤال
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the cholesterol level and the age at death are negatively linearly related?<div style=padding-top: 35px> Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the cholesterol level and the age at death are negatively linearly related?<div style=padding-top: 35px> ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the cholesterol level and the age at death are negatively linearly related?<div style=padding-top: 35px>

-{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the cholesterol level and the age at death are negatively linearly related?
سؤال
A(n) ____________________ value of the F-test statistic indicates that the multiple regression model is valid.
سؤال
Consider the following statistics of a multiple regression model: n = 25, k = 5, b1 = -6.31, and sConsider the following statistics of a multiple regression model: n = 25, k = 5, b<sub>1</sub> = -6.31, and s  = 2.98.Can we conclude at the 1% significance level that x<sub>1</sub> and y are linearly related?<div style=padding-top: 35px> = 2.98.Can we conclude at the 1% significance level that x1 and y are linearly related?
سؤال
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>2</sub>.<div style=padding-top: 35px> Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>2</sub>.<div style=padding-top: 35px> ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>2</sub>.<div style=padding-top: 35px>

-{Life Expectancy Narrative} Interpret the coefficient b2.
سؤال
Consider the following statistics of a multiple regression model: Total variation in y = 1000, SSE = 300, n = 50, and k = 4.
a.
Determine the standard error of estimate.
b.
Determine the coefficient of determination.
c.
Determine the F-statistic.
سؤال
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 1% significance level to infer that the average number of hours of exercise per week and the age at death are linearly related?<div style=padding-top: 35px> Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 1% significance level to infer that the average number of hours of exercise per week and the age at death are linearly related?<div style=padding-top: 35px> ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 1% significance level to infer that the average number of hours of exercise per week and the age at death are linearly related?<div style=padding-top: 35px>

-{Life Expectancy Narrative} Is there enough evidence at the 1% significance level to infer that the average number of hours of exercise per week and the age at death are linearly related?
سؤال
The total variation in y is equal to SSR + ____________________.
سؤال
The computer output for the multiple regression model The computer output for the multiple regression model   is shown below.However, because of a printer malfunction some of the results are not shown.These are indicated by the boldface letters a to i.Fill in the missing results (up to three decimal places).     ANALYSIS OF VARIANCE  <div style=padding-top: 35px> is shown below.However, because of a printer malfunction some of the results are not shown.These are indicated by the boldface letters a to i.Fill in the missing results (up to three decimal places).
The computer output for the multiple regression model   is shown below.However, because of a printer malfunction some of the results are not shown.These are indicated by the boldface letters a to i.Fill in the missing results (up to three decimal places).     ANALYSIS OF VARIANCE  <div style=padding-top: 35px> The computer output for the multiple regression model   is shown below.However, because of a printer malfunction some of the results are not shown.These are indicated by the boldface letters a to i.Fill in the missing results (up to three decimal places).     ANALYSIS OF VARIANCE  <div style=padding-top: 35px> ANALYSIS OF VARIANCE
The computer output for the multiple regression model   is shown below.However, because of a printer malfunction some of the results are not shown.These are indicated by the boldface letters a to i.Fill in the missing results (up to three decimal places).     ANALYSIS OF VARIANCE  <div style=padding-top: 35px>
سؤال
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there sufficient evidence at the 5% significance level to infer that the number of points that the individual's blood pressure exceeded the recommended value and the age at death are negatively linearly related?<div style=padding-top: 35px> Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there sufficient evidence at the 5% significance level to infer that the number of points that the individual's blood pressure exceeded the recommended value and the age at death are negatively linearly related?<div style=padding-top: 35px> ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there sufficient evidence at the 5% significance level to infer that the number of points that the individual's blood pressure exceeded the recommended value and the age at death are negatively linearly related?<div style=padding-top: 35px>

-{Life Expectancy Narrative} Is there sufficient evidence at the 5% significance level to infer that the number of points that the individual's blood pressure exceeded the recommended value and the age at death are negatively linearly related?
سؤال
The validity of a multiple regression model is tested using a(n) _________ test.
سؤال
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>1</sub>.<div style=padding-top: 35px> Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>1</sub>.<div style=padding-top: 35px> ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>1</sub>.<div style=padding-top: 35px>

-{Life Expectancy Narrative} Interpret the coefficient b1.
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Deck 17: Multiple Regression
1
In order to test the significance of a multiple regression model involving 4 independent variables and 25 observations, the numerator and denominator degrees of freedom for the critical value of F are 3 and 21, respectively.
False
2
In multiple regression, the standard error of estimate is defined by In multiple regression, the standard error of estimate is defined by   , where n is the sample size and k is the number of independent variables. , where n is the sample size and k is the number of independent variables.
False
3
Most statistical software print a second R2 statistic, called the coefficient of determination adjusted for degrees of freedom, which has been adjusted to take into account the sample size and the number of independent variables.
True
4
When an additional explanatory variable is introduced into a multiple regression model, the coefficient of determination will never decrease.
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5
In reference to the equation In reference to the equation   , the value 0.12 is the average change in y per unit change in x<sub>1</sub>, when x<sub>2</sub> is held constant. , the value 0.12 is the average change in y per unit change in x1, when x2 is held constant.
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6
A multiple regression is called "multiple" because it has several explanatory variables.
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7
In a multiple regression analysis involving 50 observations and 5 independent variables, the total variation in y is 475 and SSE = 71.25.Then, the coefficient of determination is 0.85.
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8
In multiple regression analysis, the adjusted coefficient of determination is adjusted for the number of independent variables and the sample size.
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9
A multiple regression equation has a coefficient of determination of 0.81.Then, the percentage of the variation in y that is explained by the regression equation is 90%.
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10
A multiple regression model is assessed to be good if the error sum of squares SSE and the standard error of estimate A multiple regression model is assessed to be good if the error sum of squares SSE and the standard error of estimate  are both small, the coefficient of determination R<sup>2</sup> is close to 1, and the value of the test statistic F is large.are both small, the coefficient of determination R2 is close to 1, and the value of the test statistic F is large.
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11
In multiple regression analysis, when the response surface (the graphical depiction of the regression equation) hits every single point, the sum of squares for error SSE = 0, the standard error of estimate sIn multiple regression analysis, when the response surface (the graphical depiction of the regression equation) hits every single point, the sum of squares for error SSE = 0, the standard error of estimate s  = 0, and the coefficient of determination R<sup>2</sup> = 1. = 0, and the coefficient of determination R2 = 1.
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12
In reference to the equation In reference to the equation   , the value 0.60 is the average change in y per unit change in x<sub>2</sub>, regardless of the value of x<sub>1</sub>. , the value 0.60 is the average change in y per unit change in x2, regardless of the value of x1.
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13
In regression analysis, the total variation in the dependent variable y, measured by In regression analysis, the total variation in the dependent variable y, measured by   , can be decomposed into two parts: the explained variation, measured by SSR, and the unexplained variation, measured by SSE. , can be decomposed into two parts: the explained variation, measured by SSR, and the unexplained variation, measured by SSE.
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14
In testing the significance of a multiple regression model with three independent variables, the null hypothesis is In testing the significance of a multiple regression model with three independent variables, the null hypothesis is   . .
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15
In reference to the equation In reference to the equation   , the value -0.80 is the y-intercept. , the value -0.80 is the y-intercept.
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16
In a multiple regression analysis involving 4 independent variables and 30 data points, the number of degrees of freedom associated with the sum of squares for error, SSE, is 25.
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17
The coefficient of determination R2 measures the proportion of variation in y that is explained by the explanatory variables included in the model.
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18
A small value of F indicates that most of the variation in y is explained by the regression equation and that the model is useful.
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19
A multiple regression model involves 40 observations and 4 independent variables produces a total variation in y of 100,000 and SSR = 80,400.Then, the value of MSE is 560.
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20
When an additional explanatory variable is introduced into a multiple regression model, coefficient of determination adjusted for degrees of freedom can never decrease.
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21
A multiple regression model involves 5 independent variables and a sample of 10 data points.If we want to test the validity of the model at the 5% significance level, the critical value is:

A) 6.26
B) 3.33
C) 9.36
D) 4.24
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22
In a multiple regression analysis involving 6 independent variables, the total variation in y is 900 and SSR = 600.What is the value of SSE?

A) 300
B) 1.50
C) 0.67
D) None of these choices.
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23
In a multiple regression analysis involving k independent variables and n data points, the number of degrees of freedom associated with the sum of squares for error is:

A) k - 1
B) n - k
C) n - 1
D) n - k - 1
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24
From the coefficient of determination, we cannot detect the strength of the relationship between the dependent variable y and any individual independent variable.
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25
A multiple regression model has the form <strong>A multiple regression model has the form   .As x<sub>3</sub> increases by one unit, with x<sub>1</sub> and x<sub>2</sub> held constant, the y on average is expected to:</strong> A) increase by 1 unit. B) increase by 12 units. C) decrease by 4 units. D) decrease by 16 units. .As x3 increases by one unit, with x1 and x2 held constant, the y on average is expected to:

A) increase by 1 unit.
B) increase by 12 units.
C) decrease by 4 units.
D) decrease by 16 units.
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26
In multiple regression analysis, the ratio MSR/MSE yields the:

A) t-test statistic for testing each individual regression coefficient.
B) F-test statistic for testing the validity of the regression equation.
C) coefficient of determination.
D) adjusted coefficient of determination.
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27
Suppose a multiple regression analysis involving 25 data points has <strong>Suppose a multiple regression analysis involving 25 data points has   and SSE = 36.Then, the number of the independent variables must be:</strong> A) 3 B) 4 C) 5 D) 6 and SSE = 36.Then, the number of the independent variables must be:

A) 3
B) 4
C) 5
D) 6
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28
A multiple regression model has the form: <strong>A multiple regression model has the form:   .As x<sub>2</sub> increases by one unit, holding x<sub>1</sub> constant, then the value of y will increase by:</strong> A) 7.25 units B) 6 units on average C) 2 units D) None of these choices .As x2 increases by one unit, holding x1 constant, then the value of y will increase by:

A) 7.25 units
B) 6 units on average
C) 2 units
D) None of these choices
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29
When an explanatory variable is dropped from a multiple regression model, the adjusted coefficient of determination can increase.
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30
In calculating the standard error of the estimate, In calculating the standard error of the estimate,   , there are (n - k-1) degrees of freedom, where n is the sample size and k is the number of independent variables in the model. , there are (n - k-1) degrees of freedom, where n is the sample size and k is the number of independent variables in the model.
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31
In a multiple regression analysis, if the model provides a poor fit, this indicates that:

A) the coefficient of determination will be close to zero.
B) the standard error of estimate will be large.
C) the sum of squares for error will be large.
D) All of these choices are true.
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32
In a multiple regression model, the mean of the probability distribution of the error variable <strong>In a multiple regression model, the mean of the probability distribution of the error variable  is assumed to be:</strong> A) k, where k is the number of independent variables included in the model. B) 1.0 C) 0.0 D) None of these choices. is assumed to be:

A) k, where k is the number of independent variables included in the model.
B) 1.0
C) 0.0
D) None of these choices.
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33
The total variation in y in a regression model will never exceed the regression sum of squares (SSR).
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34
The adjusted coefficient of determination is adjusted for the:

A) number of independent variables and the sample size.
B) number of dependent variables and the sample size.
C) coefficient of correlation and the significance level.
D) number of regression parameters including the y-intercept.
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35
A multiple regression model is assessed to be poor if the error sum of squares SSE and the standard error of estimate A multiple regression model is assessed to be poor if the error sum of squares SSE and the standard error of estimate  are both large, the coefficient of determination R<sup>2</sup> is close to 0, and the value of the test statistic F is large.are both large, the coefficient of determination R2 is close to 0, and the value of the test statistic F is large.
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36
When an explanatory variable is dropped from a multiple regression model, the coefficient of determination can increase.
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37
In order to test the validity of a multiple regression model involving 5 independent variables and 30 observations, the numerator and denominator degrees of freedom for the critical value of F are, respectively,

A) 5 and 30
B) 6 and 29
C) 5 and 24
D) 6 and 25
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38
A multiple regression model has the form A multiple regression model has the form   .The coefficient b<sub>1</sub> is interpreted as the average change in y per unit change in x<sub>1</sub>. .The coefficient b1 is interpreted as the average change in y per unit change in x1.
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39
A high value of the coefficient of determination significantly above 0 in multiple regression, accompanied by insignificant t-statistics on all parameter estimates, very often indicates a high correlation between independent variables in the model.
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40
A multiple regression model involves 10 independent variables and 30 observations.If we want to test at the 5% significance level whether one of the coefficients is = 0 (vs. \neq 0) the critical value will be:

A) 2.228
B) 2.093
C) 1.729
D) 1.697
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41
For the multiple regression model: <strong>For the multiple regression model:   , if x<sub>2</sub> were to increase by 5, holding x<sub>1</sub> and x<sub>3</sub> constant, the value of y will:</strong> A) increase by 5. B) increase by 75. C) decrease on average by 5. D) decrease on average by 75. , if x2 were to increase by 5, holding x1 and x3 constant, the value of y will:

A) increase by 5.
B) increase by 75.
C) decrease on average by 5.
D) decrease on average by 75.
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42
A multiple regression analysis involving three independent variables and 25 data points results in a value of 0.769 for the unadjusted coefficient of determination.Then, the adjusted coefficient of determination is:

A) 0.385
B) 0.877
C) 0.591
D) 0.736
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43
In a multiple regression model, the value of the coefficient of determination has to fall between

A) - and +1.
B) 0 and +1.
C)-1 and 0.
D) None of these choices.
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44
A multiple regression model has the form A multiple regression model has the form   .The coefficient b<sub>1</sub> is interpreted as the change in the average value of y per unit change in ________ holding ________ constant. .The coefficient b1 is interpreted as the change in the average value of y per unit change in ________ holding ________ constant.
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45
For a multiple regression model the following statistics are given: Total variation in y = 250, SSE = 50, k = 4, and n = 20.Then, the coefficient of determination adjusted for the degrees of freedom is:

A) 0.800
B) 0.747
C) 0.840
D) 0.775
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46
In a multiple regression model, the error variable <strong>In a multiple regression model, the error variable   is assumed to have a mean of:</strong> A)-1.0 B) 0.0 C) 1.0 D) None of these choices. is assumed to have a mean of:

A)-1.0
B) 0.0
C) 1.0
D) None of these choices.
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47
A multiple regression equation includes 5 independent variables, and the coefficient of determination is 0.81.The percentage of the variation in y that is explained by the regression equation is:

A) 81%
B) 90%
C) 86%
D) about 16%
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48
For a multiple regression model, the total variation in y can be expressed as:

A) SSE - SSR.
B) SSR - SSE.
C) SSR + SSE.
D) SSR / SSE.
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49
The coefficient of determination ____________________ for degrees of freedom takes into account the sample size and the number of independent variables when assessing model fit.
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50
In a multiple regression model, the probability distribution of the error variable <strong>In a multiple regression model, the probability distribution of the error variable   is assumed to be:</strong> A) normal. B) non-normal. C) positively skewed. D) negatively skewed. is assumed to be:

A) normal.
B) non-normal.
C) positively skewed.
D) negatively skewed.
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51
Multiple regression has four requirements for the error variable.One is that the probability distribution of the error variable is ____________________.
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52
In a multiple regression model, the following statistics are given: SSE = 100, R2 = 0.995, k = 5, and n = 15.Then, the coefficient of determination adjusted for degrees of freedom is:

A) 0.992
B) 0.900
C) 0.955
D) 0.855
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53
In a multiple regression analysis, there are 20 data points and 4 independent variables, and the sum of the squared differences between observed and predicted values of y is 180.The standard error of estimate will be:

A) 9.000
B) 6.708
C) 3.464
D) 3.000
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54
To test the validity of a multiple regression model, we test the null hypothesis that the regression coefficients are all zero by applying the:

A) F-test
B) t-test
C) z-test
D) None of these choices.
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55
In a multiple regression analysis involving 40 observations and 5 independent variables, the following statistics are given: Total variation in y = 350 and SSE = 50.Then, the coefficient of determination is:

A) 0.8408
B) 0.8571
C) 0.8469
D) 0.8529
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56
The coefficient of determination ranges from:

A) 1.0 to \infty .
B) 0.0 to 1.0.
C) 1.0 to k, where k is the number of independent variables in the model.
D) 1.0 to n, where n is the number of observations in the dependent variable.
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57
For the following multiple regression model: <strong>For the following multiple regression model:   , a unit increase in x<sub>1</sub>, holding x<sub>2</sub> and x<sub>3</sub> constant, results in:</strong> A) a decrease of 3 units on average in the value of y. B) an increase of 8 units in the value of y. C) an increase of 3 units on average in the value of y. D) None of these choices. , a unit increase in x1, holding x2 and x3 constant, results in:

A) a decrease of 3 units on average in the value of y.
B) an increase of 8 units in the value of y.
C) an increase of 3 units on average in the value of y.
D) None of these choices.
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58
For a multiple regression model, the following statistics are given: Total variation in y = 500, SSE = 80, and n = 25.Then, the coefficient of determination is:

A) 0.84
B) 0.16
C) 0.3125
D) 0.05
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59
In testing the validity of a multiple regression model in which there are four independent variables, the null hypothesis is:

A) <strong>In testing the validity of a multiple regression model in which there are four independent variables, the null hypothesis is:</strong> A)   B)   C)   D)
B) <strong>In testing the validity of a multiple regression model in which there are four independent variables, the null hypothesis is:</strong> A)   B)   C)   D)
C) <strong>In testing the validity of a multiple regression model in which there are four independent variables, the null hypothesis is:</strong> A)   B)   C)   D)
D) <strong>In testing the validity of a multiple regression model in which there are four independent variables, the null hypothesis is:</strong> A)   B)   C)   D)
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60
A multiple regression model has:

A) only one independent variable.
B) only two independent variables.
C) more than one dependent variable.
D) more than one independent variable.
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61
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} What is the adjusted coefficient of determination in this situation? What does this statistic tell you? Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} What is the adjusted coefficient of determination in this situation? What does this statistic tell you? ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} What is the adjusted coefficient of determination in this situation? What does this statistic tell you?

-{Life Expectancy Narrative} What is the adjusted coefficient of determination in this situation? What does this statistic tell you?
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62
When there is more than one independent variable in a regression model, we refer to the graphical depiction of the equation as a(n) ____________________ rather than as a straight line.
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63
Student's Final Grade
A statistics professor investigated some of the factors that affect an individual student's final grade in her course.She proposed the multiple regression model Student's Final Grade A statistics professor investigated some of the factors that affect an individual student's final grade in her course.She proposed the multiple regression model   , where y is the final grade (out of 100 points), x<sub>1</sub> is the number of lectures skipped, x<sub>2</sub> is the number of late assignments, and x<sub>3</sub> is the midterm exam score (out of 100).The professor recorded the data for 50 randomly selected students.The computer output is shown below. THE REGRESSION EQUATION IS       ANALYSIS OF VARIANCE   {Student's Final Grade Narrative} What is the coefficient of determination? What does this statistic tell you? , where y is the final grade (out of 100 points), x1 is the number of lectures skipped, x2 is the number of late assignments, and x3 is the midterm exam score (out of 100).The professor recorded the data for 50 randomly selected students.The computer output is shown below.
THE REGRESSION EQUATION IS Student's Final Grade A statistics professor investigated some of the factors that affect an individual student's final grade in her course.She proposed the multiple regression model   , where y is the final grade (out of 100 points), x<sub>1</sub> is the number of lectures skipped, x<sub>2</sub> is the number of late assignments, and x<sub>3</sub> is the midterm exam score (out of 100).The professor recorded the data for 50 randomly selected students.The computer output is shown below. THE REGRESSION EQUATION IS       ANALYSIS OF VARIANCE   {Student's Final Grade Narrative} What is the coefficient of determination? What does this statistic tell you? Student's Final Grade A statistics professor investigated some of the factors that affect an individual student's final grade in her course.She proposed the multiple regression model   , where y is the final grade (out of 100 points), x<sub>1</sub> is the number of lectures skipped, x<sub>2</sub> is the number of late assignments, and x<sub>3</sub> is the midterm exam score (out of 100).The professor recorded the data for 50 randomly selected students.The computer output is shown below. THE REGRESSION EQUATION IS       ANALYSIS OF VARIANCE   {Student's Final Grade Narrative} What is the coefficient of determination? What does this statistic tell you? Student's Final Grade A statistics professor investigated some of the factors that affect an individual student's final grade in her course.She proposed the multiple regression model   , where y is the final grade (out of 100 points), x<sub>1</sub> is the number of lectures skipped, x<sub>2</sub> is the number of late assignments, and x<sub>3</sub> is the midterm exam score (out of 100).The professor recorded the data for 50 randomly selected students.The computer output is shown below. THE REGRESSION EQUATION IS       ANALYSIS OF VARIANCE   {Student's Final Grade Narrative} What is the coefficient of determination? What does this statistic tell you? ANALYSIS OF VARIANCE
Student's Final Grade A statistics professor investigated some of the factors that affect an individual student's final grade in her course.She proposed the multiple regression model   , where y is the final grade (out of 100 points), x<sub>1</sub> is the number of lectures skipped, x<sub>2</sub> is the number of late assignments, and x<sub>3</sub> is the midterm exam score (out of 100).The professor recorded the data for 50 randomly selected students.The computer output is shown below. THE REGRESSION EQUATION IS       ANALYSIS OF VARIANCE   {Student's Final Grade Narrative} What is the coefficient of determination? What does this statistic tell you?
{Student's Final Grade Narrative} What is the coefficient of determination? What does this statistic tell you?
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64
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the model is useful in predicting length of life? Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the model is useful in predicting length of life? ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the model is useful in predicting length of life?

-{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the model is useful in predicting length of life?
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65
Some of the requirements for the error variable in a multiple regression model are that the standard deviation is a(n) ____________________ and the errors are ____________________.
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66
Some of the requirements for the error variable in a multiple regression model are that the probability distribution is ____________________ with a mean of ____________________.
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67
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>3</sub>. Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>3</sub>. ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>3</sub>.

-{Life Expectancy Narrative} Interpret the coefficient b3.
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68
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} What is the coefficient of determination? What does this statistic tell you? Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} What is the coefficient of determination? What does this statistic tell you? ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} What is the coefficient of determination? What does this statistic tell you?

-{Life Expectancy Narrative} What is the coefficient of determination? What does this statistic tell you?
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69
We test an individual coefficient in a multiple regression model using a(n) _________ test.
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70
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the cholesterol level and the age at death are negatively linearly related? Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the cholesterol level and the age at death are negatively linearly related? ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the cholesterol level and the age at death are negatively linearly related?

-{Life Expectancy Narrative} Is there enough evidence at the 5% significance level to infer that the cholesterol level and the age at death are negatively linearly related?
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71
A(n) ____________________ value of the F-test statistic indicates that the multiple regression model is valid.
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72
Consider the following statistics of a multiple regression model: n = 25, k = 5, b1 = -6.31, and sConsider the following statistics of a multiple regression model: n = 25, k = 5, b<sub>1</sub> = -6.31, and s  = 2.98.Can we conclude at the 1% significance level that x<sub>1</sub> and y are linearly related? = 2.98.Can we conclude at the 1% significance level that x1 and y are linearly related?
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73
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>2</sub>. Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>2</sub>. ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>2</sub>.

-{Life Expectancy Narrative} Interpret the coefficient b2.
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74
Consider the following statistics of a multiple regression model: Total variation in y = 1000, SSE = 300, n = 50, and k = 4.
a.
Determine the standard error of estimate.
b.
Determine the coefficient of determination.
c.
Determine the F-statistic.
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75
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 1% significance level to infer that the average number of hours of exercise per week and the age at death are linearly related? Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 1% significance level to infer that the average number of hours of exercise per week and the age at death are linearly related? ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there enough evidence at the 1% significance level to infer that the average number of hours of exercise per week and the age at death are linearly related?

-{Life Expectancy Narrative} Is there enough evidence at the 1% significance level to infer that the average number of hours of exercise per week and the age at death are linearly related?
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76
The total variation in y is equal to SSR + ____________________.
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77
The computer output for the multiple regression model The computer output for the multiple regression model   is shown below.However, because of a printer malfunction some of the results are not shown.These are indicated by the boldface letters a to i.Fill in the missing results (up to three decimal places).     ANALYSIS OF VARIANCE  is shown below.However, because of a printer malfunction some of the results are not shown.These are indicated by the boldface letters a to i.Fill in the missing results (up to three decimal places).
The computer output for the multiple regression model   is shown below.However, because of a printer malfunction some of the results are not shown.These are indicated by the boldface letters a to i.Fill in the missing results (up to three decimal places).     ANALYSIS OF VARIANCE  The computer output for the multiple regression model   is shown below.However, because of a printer malfunction some of the results are not shown.These are indicated by the boldface letters a to i.Fill in the missing results (up to three decimal places).     ANALYSIS OF VARIANCE  ANALYSIS OF VARIANCE
The computer output for the multiple regression model   is shown below.However, because of a printer malfunction some of the results are not shown.These are indicated by the boldface letters a to i.Fill in the missing results (up to three decimal places).     ANALYSIS OF VARIANCE
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78
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there sufficient evidence at the 5% significance level to infer that the number of points that the individual's blood pressure exceeded the recommended value and the age at death are negatively linearly related? Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there sufficient evidence at the 5% significance level to infer that the number of points that the individual's blood pressure exceeded the recommended value and the age at death are negatively linearly related? ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Is there sufficient evidence at the 5% significance level to infer that the number of points that the individual's blood pressure exceeded the recommended value and the age at death are negatively linearly related?

-{Life Expectancy Narrative} Is there sufficient evidence at the 5% significance level to infer that the number of points that the individual's blood pressure exceeded the recommended value and the age at death are negatively linearly related?
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79
The validity of a multiple regression model is tested using a(n) _________ test.
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80
Life Expectancy
An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x1), the cholesterol level (x2), and the number of points that the individual's blood pressure exceeded the recommended value (x3).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below.
THE REGRESSION EQUATION IS
y = 55.8 + 1.79x1 - 0.021x2 -0.061x3
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>1</sub>. Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>1</sub>. ANALYSIS OF VARIANCE
Life Expectancy An actuary wanted to develop a model to predict how long individuals will live.After consulting a number of physicians, she collected the age at death (y), the average number of hours of exercise per week (x<sub>1</sub>), the cholesterol level (x<sub>2</sub>), and the number of points that the individual's blood pressure exceeded the recommended value (x<sub>3</sub>).A random sample of 40 individuals was selected.The computer output of the multiple regression model is shown below. THE REGRESSION EQUATION IS y = 55.8 + 1.79x<sub>1</sub> - 0.021x<sub>2</sub> -0.061x<sub>3</sub>     ANALYSIS OF VARIANCE    -{Life Expectancy Narrative} Interpret the coefficient b<sub>1</sub>.

-{Life Expectancy Narrative} Interpret the coefficient b1.
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