Sparsity in Optimal Randomized Classification Trees
Abstract
Decision trees are popular Classification and Regression tools and, when small-sized, easy to interpret. Traditionally, a greedy approach has been used to build the trees, yielding a very fast training process; however, controlling sparsity (a proxy for interpretability) is challenging. In recent studies, optimal decision trees, where all decisions are optimized simultaneously, have shown a better learning performance, especially when oblique cuts are implemented. In this paper, we propose a continuous optimization approach to build sparse optimal classification trees, based on oblique cuts, with the aim of using fewer predictor variables in the cuts as well as along the whole tree. Both types of sparsity, namely local and global, are modeled by means of regularizations with polyhedral norms. The computational experience reported supports the usefulness of our methodology. In all our data sets, local and global sparsity can be improved without harming classification accuracy. Unlike greedy approaches, our ability to easily trade in some of our classification accuracy for a gain in global sparsity is shown.
Cite
@article{arxiv.2002.09191,
title = {Sparsity in Optimal Randomized Classification Trees},
author = {Rafael Blanquero and Emilio Carrizosa and Cristina Molero-Río and Dolores Romero Morales},
journal= {arXiv preprint arXiv:2002.09191},
year = {2020}
}
Comments
This research has been financed in part by research projects EC H2020 Marie Sk{\l}odowska-Curie Actions, Research and Innovation Staff Exchange Network of European Data Scientists, NeEDS, Grant agreement ID 822214, COSECLA - Fundaci\'on BBVA, MTM2015-65915R, Spain, P11-FQM-7603 and FQM-329, Junta de Andaluc\'{\i}a. This support is gratefully acknowledged. Available online 16 December 2019