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Learning Certifiably Optimal Rule Lists for Categorical Data

About

We present the design and implementation of a custom discrete optimization technique for building rule lists over a categorical feature space. Our algorithm produces rule lists with optimal training performance, according to the regularized empirical risk, with a certificate of optimality. By leveraging algorithmic bounds, efficient data structures, and computational reuse, we achieve several orders of magnitude speedup in time and a massive reduction of memory consumption. We demonstrate that our approach produces optimal rule lists on practical problems in seconds. Our results indicate that it is possible to construct optimal sparse rule lists that are approximately as accurate as the COMPAS proprietary risk prediction tool on data from Broward County, Florida, but that are completely interpretable. This framework is a novel alternative to CART and other decision tree methods for interpretable modeling.

Elaine Angelino, Nicholas Larus-Stone, Daniel Alabi, Margo Seltzer, Cynthia Rudin• 2017

Related benchmarks

TaskDatasetResultRank
ClassificationWine
F1 Macro97.43
48
ClassificationBank
F1 Score66.86
48
ClassificationWine
Accuracy94.52
45
ClassificationActivity
Accuracy61.04
34
ClassificationAdult
Accuracy79.98
33
ClassificationWine
F1 Score97.43
26
Classificationtic-tac-toe
F1 Score98.49
26
Classificationbanknote
F1 Score98.49
26
Classificationmagic
F1 Score77.37
26
Classificationc-4
F1 Score51.72
26
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