2024
DOI: 10.3390/make6020061
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Interaction Difference Hypothesis Test for Prediction Models

Thomas Welchowski,
Dominic Edelmann

Abstract: Machine learning research focuses on the improvement of prediction performance. Progress was made with black-box models that flexibly adapt to the given data. However, due to their increased complexity, black-box models are more difficult to interpret. To address this issue, techniques for interpretable machine learning have been developed, yet there is still a lack of methods to reliably identify interaction effects between predictors under uncertainty. In this work, we present a model-agnostic hypothesis tes… Show more

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