2023
DOI: 10.1515/ijb-2023-0052
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Prediction-based variable selection for component-wise gradient boosting

Sophie Potts,
Elisabeth Bergherr,
Constantin Reinke
et al.

Abstract: Model-based component-wise gradient boosting is a popular tool for data-driven variable selection. In order to improve its prediction and selection qualities even further, several modifications of the original algorithm have been developed, that mainly focus on different stopping criteria, leaving the actual variable selection mechanism untouched. We investigate different prediction-based mechanisms for the variable selection step in model-based component-wise gradient boosting. These approaches include Akaike… Show more

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