Search
Program Calendar
Browse By Day
Browse By Time
Browse By Person
Browse By Room
Browse By Unit
Browse By Session Type
Search Tips
Annual Meeting Housing and Travel
Personal Schedule
Sign In
X (Twitter)
Recommendations from popular statistics texts regarding avoidance of predictor variable multicollinearity in the use of multiple regression are considered from the perspective of the alternate purposes of explanation and prediction. As opposed to prior studies that consider the effect of multicollinearity on prediction accuracy by varying a constant proportion eigenvalue decrement, a method for manipulating multicollinearity while maintaining a real data set’s eigenvalue structure is used. For 21 data sets examined, it is shown that multicollinearity has no effect in respect to either relative or absolute prediction accuracy.