可解释的区域描述符:基于hyperbox的局部解释

Susanne Dandl, Giuseppe Casalicchio, Bernd Bischl, Ludwig Bothmann
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引用次数: 0

摘要

这项工作引入了可解释的区域描述符,或ird,用于局部的,模型不可知的解释。ird是描述如何在不影响其预测的情况下改变观测值特征值的超框。它们通过提供一组“即使”论据(半事实性解释)来证明预测的正确性,并指出哪些特征会影响预测,以及是否存在点偏差或不可信。一个具体的用例表明,这对机器学习建模者和受决策影响的人都是有价值的。我们将ird的搜索形式化为一个优化问题,并引入了一个计算ird的统一框架,该框架涵盖了所需数据、初始化技术和后处理方法。我们将展示如何调整现有的hyperbox方法以适应这个统一框架。一项基准研究比较了几种基于质量度量的方法,并确定了两种改进ird的策略。
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Interpretable Regional Descriptors: Hyperbox-Based Local Explanations
This work introduces interpretable regional descriptors, or IRDs, for local, model-agnostic interpretations. IRDs are hyperboxes that describe how an observation's feature values can be changed without affecting its prediction. They justify a prediction by providing a set of"even if"arguments (semi-factual explanations), and they indicate which features affect a prediction and whether pointwise biases or implausibilities exist. A concrete use case shows that this is valuable for both machine learning modelers and persons subject to a decision. We formalize the search for IRDs as an optimization problem and introduce a unifying framework for computing IRDs that covers desiderata, initialization techniques, and a post-processing method. We show how existing hyperbox methods can be adapted to fit into this unified framework. A benchmark study compares the methods based on several quality measures and identifies two strategies to improve IRDs.
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