Multicollinearity
occurs when two or more independent variables (or combinations of independent
variables) are highly (but not perfectly) correlated with each other.
Consequences of Multicollinearity
• A high degree
of multicollinearity can make it difficult to detect significant relationships.
•
Multicollinearity does not affect the consistency of the estimates of the
regression coefficients but estimates become extremely imprecise and unreliable.
• It does not
affect F-statistic.
• The multicollinearity
problem does not result in biased coefficient estimates; however, standard errors
of regression coefficients can increase, causing insignificant t-tests and wide
confidence intervals i.e. Type-II error increases.
Detecting Multicollinearity
• High pair-wise
correlations among independent variables do not necessarily indicate presence
of multicollinearity while a low pair-wise correlation among independent
variables is not evidence that multicollinearity does not exist. Correlation
between independent variables is useful as an indicator of multicollinearity
only in case of two independent variables.
• The classic
symptom of multicollinearity is a high R2 and significant
F-statistic even though the T statistics on the estimated slope coefficients
are not significant
Correcting Multicollinearity
The problem of
multicollinearity can be corrected by excluding one or more of the regression
variables
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