2023
DOI: 10.48550/arxiv.2301.04740
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The Berkelmans-Pries Feature Importance Method: A Generic Measure of Informativeness of Features

Abstract: Over the past few years, the use of machine learning models has emerged as a generic and powerful means for prediction purposes. At the same time, there is a growing demand for interpretability of prediction models. To determine which features of a dataset are important to predict a target variable Y , a Feature Importance (FI) method can be used. By quantifying how important each feature is for predicting Y , irrelevant features can be identified and removed, which could increase the speed and accuracy of a m… Show more

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