主题引导的时间序列反事实解释

Peiyu Li, S. F. Boubrahimi, S. M. Hamdi
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引用次数: 5

摘要

随着对可解释机器学习方法的需求不断增加,有必要增加人类的努力,为模型决策的影响因素提供不同的解释。为了提高基于人工智能系统的信任度和透明度,可解释人工智能(XAI)领域应运而生。XAI范式分为两大类:特征归因和反事实解释方法。虽然特征归因方法是基于解释模型决策背后的原因,但反事实解释方法发现会导致不同决策的最小输入变化。在本文中,我们的目标是通过使用母题来生成反事实解释,在时间序列模型中建立信任和透明度。我们提出了一种新的模型,即母题引导反事实解释(MG-CF),它产生直观的事后反事实解释,充分利用重要的母题在决策过程中提供解释信息。据我们所知,这是第一次利用母题来指导反事实解释的产生。我们使用来自UCR存储库的五个真实时间序列数据集验证了我们的模型。我们的实验结果表明,与其他竞争的最先进的基线相比,MG-CF在平衡所有理想的反事实解释属性方面具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Motif-guided Time Series Counterfactual Explanations
With the rising need of interpretable machine learning methods, there is a necessity for a rise in human effort to provide diverse explanations of the influencing factors of the model decisions. To improve the trust and transparency of AI-based systems, the EXplainable Artificial Intelligence (XAI) field has emerged. The XAI paradigm is bifurcated into two main categories: feature attribution and counterfactual explanation methods. While feature attribution methods are based on explaining the reason behind a model decision, counterfactual explanation methods discover the smallest input changes that will result in a different decision. In this paper, we aim at building trust and transparency in time series models by using motifs to generate counterfactual explanations. We propose Motif-Guided Counterfactual Explanation (MG-CF), a novel model that generates intuitive post-hoc counterfactual explanations that make full use of important motifs to provide interpretive information in decision-making processes. To the best of our knowledge, this is the first effort that leverages motifs to guide the counterfactual explanation generation. We validated our model using five real-world time-series datasets from the UCR repository. Our experimental results show the superiority of MG-CF in balancing all the desirable counterfactual explanations properties in comparison with other competing state-of-the-art baselines.
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