Human Evaluation of Models Built for Interpretability

Isaac Lage, Emily Chen, Jeffrey He, Menaka Narayanan, Been Kim, S. Gershman, F. Doshi-Velez
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引用次数: 95

Abstract

Recent years have seen a boom in interest in interpretable machine learning systems built on models that can be understood, at least to some degree, by domain experts. However, exactly what kinds of models are truly human-interpretable remains poorly understood. This work advances our understanding of precisely which factors make models interpretable in the context of decision sets, a specific class of logic-based model. We conduct carefully controlled human-subject experiments in two domains across three tasks based on human-simulatability through which we identify specific types of complexity that affect performance more heavily than others-trends that are consistent across tasks and domains. These results can inform the choice of regularizers during optimization to learn more interpretable models, and their consistency suggests that there may exist common design principles for interpretable machine learning systems.
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人类对可解释性模型的评价
近年来,人们对可解释的机器学习系统产生了浓厚的兴趣,这些系统建立在至少在某种程度上可以被领域专家理解的模型之上。然而,究竟什么样的模型是人类真正可以解释的,人们仍然知之甚少。这项工作促进了我们对哪些因素使模型在决策集(一种特定的基于逻辑的模型)的背景下可解释的理解。我们在基于人类可模拟性的三个任务的两个领域进行了精心控制的人类受试者实验,通过这些实验,我们确定了比其他任务和领域更严重影响性能的特定类型的复杂性——这些趋势在任务和领域之间是一致的。这些结果可以为优化过程中正则化器的选择提供信息,以学习更多可解释的模型,它们的一致性表明,可解释机器学习系统可能存在共同的设计原则。
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