Chapter 335 Ridge Regression
Outliers. Extreme values or outliers in the X-space can cause multicollinearity as well as hide it. We call this outlier-induced multicollinearity. This should be corrected by removing the outliers before ridge regression is applied. Detection of Multicollinearity There are several methods of detecting multicollinearity. We mention a few. 1.
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