夏普利值的因果分析:条件值与边际值

Ilya Rozenfeld
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引用次数: 0

摘要

Shapley 值是一个博弈论概念,近年来已成为解释机器学习(ML)模型的最流行工具之一。不幸的是,计算 Shapley 值的两种最常见方法(条件法和边际法)会导致不同的结果,当特征相关时还会产生一些令人不满意的副作用。这反过来又导致了文献中不同作者对方法选择提出了相互矛盾的建议。本文旨在通过因果论证来解决这一争议。我们表明,差异源于每种方法在处理缺失因果信息时所作的隐含假设。我们还证明,从因果关系的角度来看,条件方法从根本上是不健全的。结合之前的研究[1],我们得出结论:边际方法应优于条件方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Causal Analysis of Shapley Values: Conditional vs. Marginal
Shapley values, a game theoretic concept, has been one of the most popular tools for explaining Machine Learning (ML) models in recent years. Unfortunately, the two most common approaches, conditional and marginal, to calculating Shapley values can lead to different results along with some undesirable side effects when features are correlated. This in turn has led to the situation in the literature where contradictory recommendations regarding choice of an approach are provided by different authors. In this paper we aim to resolve this controversy through the use of causal arguments. We show that the differences arise from the implicit assumptions that are made within each method to deal with missing causal information. We also demonstrate that the conditional approach is fundamentally unsound from a causal perspective. This, together with previous work in [1], leads to the conclusion that the marginal approach should be preferred over the conditional one.
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