English

Optimal Classification Trees for Continuous Feature Data Using Dynamic Programming with Branch-and-Bound

Machine Learning 2025-01-15 v1 Artificial Intelligence Data Structures and Algorithms

Abstract

Computing an optimal classification tree that provably maximizes training performance within a given size limit, is NP-hard, and in practice, most state-of-the-art methods do not scale beyond computing optimal trees of depth three. Therefore, most methods rely on a coarse binarization of continuous features to maintain scalability. We propose a novel algorithm that optimizes trees directly on the continuous feature data using dynamic programming with branch-and-bound. We develop new pruning techniques that eliminate many sub-optimal splits in the search when similar to previously computed splits and we provide an efficient subroutine for computing optimal depth-two trees. Our experiments demonstrate that these techniques improve runtime by one or more orders of magnitude over state-of-the-art optimal methods and improve test accuracy by 5% over greedy heuristics.

Keywords

Cite

@article{arxiv.2501.07903,
  title  = {Optimal Classification Trees for Continuous Feature Data Using Dynamic Programming with Branch-and-Bound},
  author = {Catalin E. Brita and Jacobus G. M. van der Linden and Emir Demirović},
  journal= {arXiv preprint arXiv:2501.07903},
  year   = {2025}
}

Comments

In the proceedings of AAAI-25