arXiv Analytics

Sign in

arXiv:2007.14528 [stat.ML]AbstractReferencesReviewsResources

Surrogate Locally-Interpretable Models with Supervised Machine Learning Algorithms

Linwei Hu, Jie Chen, Vijayan N. Nair, Agus Sudjianto

Published 2020-07-28Version 1

Supervised Machine Learning (SML) algorithms, such as Gradient Boosting, Random Forest, and Neural Networks, have become popular in recent years due to their superior predictive performance over traditional statistical methods. However, their complexity makes the results hard to interpret without additional tools. There has been a lot of recent work in developing global and local diagnostics for interpreting SML models. In this paper, we propose a locally-interpretable model that takes the fitted ML response surface, partitions the predictor space using model-based regression trees, and fits interpretable main-effects models at each of the nodes. We adapt the algorithm to be efficient in dealing with high-dimensional predictors. While the main focus is on interpretability, the resulting surrogate model also has reasonably good predictive performance.

Related articles:
arXiv:2204.12868 [stat.ML] (Published 2022-04-27)
Performance and Interpretability Comparisons of Supervised Machine Learning Algorithms: An Empirical Study
arXiv:1802.10510 [stat.ML] (Published 2018-02-28)
Decision functions from supervised machine learning algorithms as collective variables for accelerating molecular simulations
arXiv:2305.16703 [stat.ML] (Published 2023-05-26)
Sources of Uncertainty in Machine Learning -- A Statisticians' View