树空间原型:另一个看使树集成可解释

S. Tan, Matvey Soloviev, G. Hooker, M. Wells
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引用次数: 50

摘要

决策树集合在许多问题上表现良好,但不能解释。与现有的可解释性方法(专注于解释特征和预测之间的关系)相反,我们提出了一种替代方法,通过为每个类提供代表性点来解释树集成分类器——原型。我们为梯度提升树模型引入了一种新的距离,并提出了一种新的、有理论保证的自适应原型选择方法,可以灵活地在每个类中选择不同数量的原型。我们在随机森林和梯度增强树上展示了我们的方法,表明原型在用作最接近原型分类器时可以表现得与原始树集成一样好,甚至更好。在用户研究中,人类在使用原型时比使用Shapley值(一种流行的特征归因方法)时更善于预测树集成分类器的输出。因此,原型为基于特征的树整体解释提供了一个可行的替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tree Space Prototypes: Another Look at Making Tree Ensembles Interpretable
Ensembles of decision trees perform well on many problems, but are not interpretable. In contrast to existing approaches in interpretability that focus on explaining relationships between features and predictions, we propose an alternative approach to interpret tree ensemble classifiers by surfacing representative points for each class -- prototypes. We introduce a new distance for Gradient Boosted Tree models, and propose new, adaptive prototype selection methods with theoretical guarantees, with the flexibility to choose a different number of prototypes in each class. We demonstrate our methods on random forests and gradient boosted trees, showing that the prototypes can perform as well as or even better than the original tree ensemble when used as a nearest-prototype classifier. In a user study, humans were better at predicting the output of a tree ensemble classifier when using prototypes than when using Shapley values, a popular feature attribution method. Hence, prototypes present a viable alternative to feature-based explanations for tree ensembles.
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