Regressions Regularized by Correlations
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May 1, 2018
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Stan Lipovetsky
GfK North America, Minneapolis
Abstract
The regularization of multiple regression by proportionality to correlations of predictors with dependent variable is applied to the least squares objective and normal equations to relax the exact equalities and to get a robust solution. This technique produces models not prone to multicollinearity and is very useful in practical applications.
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