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How Case-Based Reasoning Explains Neural Networks: A Theoretical Analysis of XAI Using Post-Hoc Explanation-by-Example from a Survey of ANN-CBR Twin-Systems

机译:基于案例的推理如何解释神经网络:使用事后解释的XAI理论分析,基于对ANN-CBR双系统的调查

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摘要

This paper proposes a theoretical analysis of one approach to the explainable AI (XAI) problem, using post-hoc explanation-by-example, that relies on the twinning of artificial neural networks (ANNs) with case-based reasoning (CBR) systems; so-called ANN-CBR twins. It surveys these systems to advance a new theoretical interpretation of previous work and define a road map for CBR's further role in XAI. A systematic survey of 1,102 papers was conducted to identify a fragmented literature on this topic and trace its influence to more recent work involving deep neural networks (DNNs). The twin-systems approach is advanced as one possible coherent, generic solution to the XAI problem. The paper concludes by road-mapping future directions for this XAI solution, considering (ⅰ) further tests of feature-weighting techniques, (ⅱ) how explanatory cases might be deployed (e.g., in counterfactuals, a fortori cases), and (ⅲ) the unwelcome, much-ignored issue of user evaluation.
机译:本文通过事后事例解释,提出了一种针对可解释性AI(XAI)问题的方法的理论分析,该方法依赖于人工神经网络(ANN)与基于案例的推理(CBR)系统的结合。所谓的ANN-CBR双胞胎。它对这些系统进行了调查,以推进对先前工作的新理论解释,并为CBR在XAI中的进一步作用定义了路线图。对1,102篇论文进行了系统的调查,以找出有关该主题的零散文献,并将其影响追溯到涉及深度神经网络(DNN)的最新工作。双系统方法是作为XAI问题的一种可能的连贯通用解决方案而发展的。本文通过为该XAI解决方案确定未来的方向进行总结,并考虑(ⅰ)对特征加权技术的进一步测试,(ⅱ)如何部署解释性案例(例如,在反事实,假冒案例中),以及(ⅲ)用户评价这个不受欢迎,被忽视的问题。

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  • 来源
  • 会议地点 Otzenhausen(DE)
  • 作者

    Mark T. Keane; Eoin M. Kenny;

  • 作者单位

    School of Computer Science University College Dublin Dublin Ireland Insight Centre for Data Analytics University College Dublin Dublin Ireland VistaMilk SFI Research Centre University College Dublin Dublin Ireland;

    School of Computer Science University College Dublin Dublin Ireland Insight Centre for Data Analytics University College Dublin Dublin Ireland;

  • 会议组织
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    CBR; Explanation; Artificial neural networks; XAI; Deep learning;

    机译:CBR;说明;人工神经网络; AI;深度学习;

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