Learning customized and optimized lists of rules with mathematical programming

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Abstract

We introduce a mathematical programming approach to building rule lists, which are a type of interpretable, nonlinear, and logical machine learning classifier involving IF-THEN rules. Unlike traditional decision tree algorithms like CART and C5.0, this method does not use greedy splitting and pruning. Instead, it aims to fully optimize a combination of accuracy and sparsity, obeying user-defined constraints. This method is useful for producing non-black-box predictive models, and has the benefit of a clear user-defined tradeoff between training accuracy and sparsity. The flexible framework of mathematical programming allows users to create customized models with a provable guarantee of optimality. The software reviewed as part of this submission was given the DOI (Digital Object Identifier) https://doi.org/10.5281/zenodo.1344142.

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Rudin, C., & Ertekin, Ş. (2018). Learning customized and optimized lists of rules with mathematical programming. Mathematical Programming Computation, 10(4), 659–702. https://doi.org/10.1007/s12532-018-0143-8

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