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Optimal Policy Trees

Machine-mediated learning (ML), 2020
3 December 2020
Maxime Amram
Jack Dunn
Ying Daisy Zhuo
    CMLOffRL
ArXiv (abs)PDFHTML
Abstract

We propose an approach for learning optimal tree-based prescription policies directly from data, combining methods for counterfactual estimation from the causal inference literature with recent advances in training globally-optimal decision trees. The resulting method, Optimal Policy Trees, yields interpretable prescription policies, is highly scalable, and handles both discrete and continuous treatments. We conduct extensive experiments on both synthetic and real-world datasets and demonstrate that these trees offer best-in-class performance across a wide variety of problems.

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