论文标题

通过利用反事实来基于计算规则的解释

Computing Rule-Based Explanations by Leveraging Counterfactuals

论文作者

Geng, Zixuan, Schleich, Maximilian, Suciu, Dan

论文摘要

精致的机器模型越来越多地用于日常生活中的高风险决策。迫切需要为这种自动决策制定有效的解释技术。已经提出了基于规则的解释,例如贷款申请(例如贷款申请),因为它们增加了用户对决定的信任。但是,基于规则的解释效率非常低,并且现有系统牺牲了其质量以实现合理的绩效。我们通过使用不同类型的解释,反事实解释提出了一种新的方法来计算基于规则的解释,并已经开发了几个有效的系统。我们证明了二元定理,表明基于规则和基于反事实的解释是彼此双重的,然后使用此观察结果来开发一种有效的算法来计算基于规则的解释,该解释将基于反事实的解释用作甲骨文。我们进行了广泛的实验,表明我们的系统计算基于规则的质量的解释,并且具有相同或更好的性能,与以前的两个系统,即MinsetCover和Anchor。

Sophisticated machine models are increasingly used for high-stakes decisions in everyday life. There is an urgent need to develop effective explanation techniques for such automated decisions. Rule-Based Explanations have been proposed for high-stake decisions like loan applications, because they increase the users' trust in the decision. However, rule-based explanations are very inefficient to compute, and existing systems sacrifice their quality in order to achieve reasonable performance. We propose a novel approach to compute rule-based explanations, by using a different type of explanation, Counterfactual Explanations, for which several efficient systems have already been developed. We prove a Duality Theorem, showing that rule-based and counterfactual-based explanations are dual to each other, then use this observation to develop an efficient algorithm for computing rule-based explanations, which uses the counterfactual-based explanation as an oracle. We conduct extensive experiments showing that our system computes rule-based explanations of higher quality, and with the same or better performance, than two previous systems, MinSetCover and Anchor.

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