cs.AI updates on arXiv.org 10月17日 12:19
XAI局限性及其影响研究
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本文探讨了XAI领域现有方法的局限性及其对解释的影响,提出了一个分类框架,以揭示解释失败的复杂性和细微之处,并讨论了提升XAI系统解释质量的研究方向。

arXiv:2405.13474v2 Announce Type: replace-cross Abstract: As Machine Learning models achieve unprecedented levels of performance, the XAI domain aims at making these models understandable by presenting end-users with intelligible explanations. Yet, some existing XAI approaches fail to meet expectations: several issues have been reported in the literature, generally pointing out either technical limitations or misinterpretations by users. In this paper, we argue that the resulting harms arise from a complex overlap of multiple failures in XAI, which existing ad-hoc studies fail to capture. This work therefore advocates for a holistic perspective, presenting a systematic investigation of limitations of current XAI methods and their impact on the interpretation of explanations. % By distinguishing between system-specific and user-specific failures, we propose a typological framework that helps revealing the nuanced complexities of explanation failures. Leveraging this typology, we discuss some research directions to help practitioners better understand the limitations of XAI systems and enhance the quality of ML explanations.

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XAI 机器学习 解释性AI 局限性 研究方法
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