Rigorous Explanations for Tree Ensembles
AI 摘要
该论文研究了随机森林和梯度提升树等树集成模型的严格、逻辑自洽的可解释性。
主要贡献
- 为树集成模型提供严格定义的可解释性方法
- 研究了随机森林和梯度提升树的可解释性
- 旨在提高人们对树集成模型预测的信任度
方法论
论文通过逻辑推理,为树集成模型的预测构建逻辑自洽的解释。
原文摘要
Tree ensembles (TEs) find a multitude of practical applications. They represent one of the most general and accurate classes of machine learning methods. While they are typically quite concise in representation, their operation remains inscrutable to human decision makers. One solution to build trust in the operation of TEs is to automatically identify explanations for the predictions made. Evidently, we can only achieve trust using explanations, if those explanations are rigorous, that is truly reflect properties of the underlying predictor they explain This paper investigates the computation of rigorously-defined, logically-sound explanations for the concrete case of two well-known examples of tree ensembles, namely random forests and boosted trees.