衡量效用,获得信任:对XAI研究人员的实用建议

Brittany Davis, M. Glenski, William I. N. Sealy, Dustin L. Arendt
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引用次数: 22

摘要

在过去十年中,对机器学习模型解释的研究,即可解释的人工智能(XAI),与深度人工神经网络一起出现了相应的指数增长。由于历史原因,解释和信任一直纠缠在一起。然而,对信任的关注过于狭隘,导致研究界偏离了经过验证和真正的经验方法,这些方法产生了关于人和解释的更站得住的科学知识。为了解决这个问题,我们为XAI领域的研究人员提供了一条实用的前进道路。我们建议研究人员关注机器学习解释的效用,而不是信任。我们概述了五个广泛的用例,其中解释是有用的,对于每个用例,我们描述了依赖于客观经验测量和可证伪假设的伪实验。我们相信这种实验的严谨性对于促进XAI领域的科学知识是必要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Measure Utility, Gain Trust: Practical Advice for XAI Researchers
Research into the explanation of machine learning models, i.e., explainable AI (XAI), has seen a commensurate exponential growth alongside deep artificial neural networks throughout the past decade. For historical reasons, explanation and trust have been intertwined. However, the focus on trust is too narrow, and has led the research community astray from tried and true empirical methods that produced more defensible scientific knowledge about people and explanations. To address this, we contribute a practical path forward for researchers in the XAI field. We recommend researchers focus on the utility of machine learning explanations instead of trust. We outline five broad use cases where explanations are useful and, for each, we describe pseudo-experiments that rely on objective empirical measurements and falsifiable hypotheses. We believe that this experimental rigor is necessary to contribute to scientific knowledge in the field of XAI.
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