AIM 4: Explain the concept of multicollinearity and implications it has on modeling.
1、Which of the following statements regarding multicollinearity is FALSE?
A) Multicollinearity may be a problem even if the Multicollinearity is not perfect.
B) Multicollinearity makes it difficult to determine the contribution to explanation of the dependent variable of an individual explanatory variable.
C) Multicollinearity may be present in any regression model.
D) If the t-statistics for the individual independent variables are insignificant, yet he F-statistic is significant, this indicates the presence of Multicollinearity. |