RENT—Repeated Elastic Net Technique for Feature Selection | IEEE Journals & Magazine | IEEE Xplore

RENT—Repeated Elastic Net Technique for Feature Selection


RENT is an ensemble feature selector based on training many generalized linear models with elastic net regularization on distinct subsets of the dataset. The selection re...

Abstract:

Feature selection is an essential step in data science pipelines to reduce the complexity associated with large datasets. While much research on this topic focuses on opt...Show More

Abstract:

Feature selection is an essential step in data science pipelines to reduce the complexity associated with large datasets. While much research on this topic focuses on optimizing predictive performance, few studies investigate stability in the context of the feature selection process. In this study, we present the Repeated Elastic Net Technique (RENT) for Feature Selection. RENT uses an ensemble of generalized linear models with elastic net regularization, each trained on distinct subsets of the training data. The feature selection is based on three criteria evaluating the weight distributions of features across all elementary models. This fact leads to the selection of features with high stability that improve the robustness of the final model. Furthermore, unlike established feature selectors, RENT provides valuable information for model interpretation concerning the identification of objects in the data that are difficult to predict during training. In our experiments, we benchmark RENT against six established feature selectors on eight multivariate datasets for binary classification and regression. In the experimental comparison, RENT shows a well-balanced trade-off between predictive performance and stability. Finally, we underline the additional interpretational value of RENT with an exploratory post-hoc analysis of a healthcare dataset.
RENT is an ensemble feature selector based on training many generalized linear models with elastic net regularization on distinct subsets of the dataset. The selection re...
Published in: IEEE Access ( Volume: 9)
Page(s): 152333 - 152346
Date of Publication: 08 November 2021
Electronic ISSN: 2169-3536

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