English

Rectified Decision Trees: Towards Interpretability, Compression and Empirical Soundness

Machine Learning 2020-08-25 v2 Machine Learning

Abstract

How to obtain a model with good interpretability and performance has always been an important research topic. In this paper, we propose rectified decision trees (ReDT), a knowledge distillation based decision trees rectification with high interpretability, small model size, and empirical soundness. Specifically, we extend the impurity calculation and the pure ending condition of the classical decision tree to propose a decision tree extension that allows the use of soft labels generated by a well-trained teacher model in training and prediction process. It is worth noting that for the acquisition of soft labels, we propose a new multiple cross-validation based method to reduce the effects of randomness and overfitting. These approaches ensure that ReDT retains excellent interpretability and even achieves fewer nodes than the decision tree in the aspect of compression while having relatively good performance. Besides, in contrast to traditional knowledge distillation, back propagation of the student model is not necessarily required in ReDT, which is an attempt of a new knowledge distillation approach. Extensive experiments are conducted, which demonstrates the superiority of ReDT in interpretability, compression, and empirical soundness.

Keywords

Cite

@article{arxiv.1903.05965,
  title  = {Rectified Decision Trees: Towards Interpretability, Compression and Empirical Soundness},
  author = {Jiawang Bai and Yiming Li and Jiawei Li and Yong Jiang and Shutao Xia},
  journal= {arXiv preprint arXiv:1903.05965},
  year   = {2020}
}

Comments

This is an early draft of our journal submission 'Rectified Decision Trees: Exploring the Landscape of Interpretable and Effective Machine Learning'. Please refer to our new version (arXiv:2008.09413)

R2 v1 2026-06-23T08:08:01.672Z