WLogit - Variable Selection in High-Dimensional Logistic Regression
Models using a Whitening Approach
It proposes a novel variable selection approach in
classification problem that takes into account the correlations
that may exist between the predictors of the design matrix in a
high-dimensional logistic model. Our approach consists in
rewriting the initial high-dimensional logistic model to remove
the correlation between the predictors and in applying the
generalized Lasso criterion.