解释AI中的解释

B. Mittelstadt, Chris Russell, Sandra Wachter
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引用次数: 500

摘要

最近关于机器学习和人工智能可解释性的研究主要集中在构建简化模型上,这些模型近似于用于决策的真实标准。这些模型是一种有用的教学工具,可以教训练有素的专业人员如何预测复杂系统将做出哪些决策,最重要的是,系统可能如何崩溃。然而,在考虑任何这样的模型时,重要的是要记住Box的格言:“所有模型都是错误的,但有些模型是有用的。”我们将重点讨论这些模型与哲学和社会学解释之间的区别。这些模型可以被理解为用于解释的“自己动手工具包”,允许从业者直接回答“如果问题”或在没有外部帮助的情况下生成对比解释。虽然这是一种有价值的能力,但将这些模型作为解释似乎比必要的要困难得多,而其他形式的解释可能没有同样的权衡。我们对比了不同的思想流派对什么是解释,并建议机器学习可能会受益于更广泛地看待问题。
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Explaining Explanations in AI
Recent work on interpretability in machine learning and AI has focused on the building of simplified models that approximate the true criteria used to make decisions. These models are a useful pedagogical device for teaching trained professionals how to predict what decisions will be made by the complex system, and most importantly how the system might break. However, when considering any such model it's important to remember Box's maxim that "All models are wrong but some are useful." We focus on the distinction between these models and explanations in philosophy and sociology. These models can be understood as a "do it yourself kit" for explanations, allowing a practitioner to directly answer "what if questions" or generate contrastive explanations without external assistance. Although a valuable ability, giving these models as explanations appears more difficult than necessary, and other forms of explanation may not have the same trade-offs. We contrast the different schools of thought on what makes an explanation, and suggest that machine learning might benefit from viewing the problem more broadly.
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