3zhang/Python-Lasso-ElasticNet-Ridge-Regression-with-Customized-Penalties
An extension of sklearn's Lasso/ElasticNet/Ridge model to allow users to customize the penalties of different covariates. Works similar to penalty.factor parameter in R's glmnet.
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Apr 28, 2023
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