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Marketing Research Study Set 3
Quiz 15: Understanding Regression Analysis Basics
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Question 61
True/False
The VIF is useful for identifying multicollinearity.
Question 62
True/False
In dummy coding,the 0-versus-1 code is traditional,but any two adjacent numbers could be used,such as 1 versus 2.
Question 63
True/False
Multiple regression requires specification of a general conceptual model that identifies independent and dependent variables and shows their expected relationships.
Question 64
True/False
In multiple regression we make a prediction,but we cannot put confidence intervals around our prediction as we can in bivariate regression.
Question 65
True/False
Stepwise multiple regression is useful if a researcher has many dependent variables but needs additional dependent variables in order to obtain a good predictive model.
Question 66
True/False
If we wanted to use a type of regression that first enters the variable that explains the most variance,then the variable that explains the second highest level of variance and so on,we would use ordinal regression.
Question 67
True/False
The multiple R,also called the coefficient of determination,in multiple regression ranges from 0 to +1.00 and represents the amount of the dependent variable "explained" by the combined independent variables.
Question 68
True/False
Multiple regression may be used as a screening device in the sense that it may be used to reduce large numbers of potential independent variables in order to spot those that are most salient for the dependent variable.
Question 69
True/False
Multicollinearity refers to correlations among the dependent variables and makes predictions much more accurate because predicting one variable also allows you to predict the correlated variable(s).
Question 70
True/False
An outlier refers to Multiple Rs that are above expected norms such as above 95 or 100.
Question 71
True/False
When you have independent variables that are not significant in multiple regression analysis,it is appropriate to take them out and rerun the regression.The new model is referred to as a "trimmed" model.