English

ENTMOOT: A Framework for Optimization over Ensemble Tree Models

Machine Learning 2021-05-19 v3 Artificial Intelligence Machine Learning Optimization and Control

Abstract

Gradient boosted trees and other regression tree models perform well in a wide range of real-world, industrial applications. These tree models (i) offer insight into important prediction features, (ii) effectively manage sparse data, and (iii) have excellent prediction capabilities. Despite their advantages, they are generally unpopular for decision-making tasks and black-box optimization, which is due to their difficult-to optimize structure and the lack of a reliable uncertainty measure. ENTMOOT is our new framework for integrating (already trained) tree models into larger optimization problems. The contributions of ENTMOOT include: (i) explicitly introducing a reliable uncertainty measure that is compatible with tree models, (ii) solving the larger optimization problems that incorporate these uncertainty aware tree models, (iii) proving that the solutions are globally optimal, i.e. no better solution exists. In particular, we show how the ENTMOOT approach allows a simple integration of tree models into decision-making and black-box optimization, where it proves as a strong competitor to commonly-used frameworks.

Keywords

Cite

@article{arxiv.2003.04774,
  title  = {ENTMOOT: A Framework for Optimization over Ensemble Tree Models},
  author = {Alexander Thebelt and Jan Kronqvist and Miten Mistry and Robert M. Lee and Nathan Sudermann-Merx and Ruth Misener},
  journal= {arXiv preprint arXiv:2003.04774},
  year   = {2021}
}

Comments

33 pages, 10 figures, 2 tables

R2 v1 2026-06-23T14:10:17.448Z