2021
DOI: 10.48550/arxiv.2112.00434
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Training Experimentally Robust and Interpretable Binarized Regression Models Using Mixed-Integer Programming

Abstract: In this paper, we explore model-based approach to training robust and interpretable binarized regression models for multiclass classification tasks using Mixed-Integer Programming (MIP). Our MIP model balances the optimization of prediction margin and model size by using a weighted objective that: minimizes the total margin of incorrectly classified training instances, maximizes the total margin of correctly classified training instances, and maximizes the overall model regularization. We conduct two sets of e… Show more

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