Explaining machine learning classifiers through diverse counterfactual explanations

R. Mothilal, Amit Sharma, Chenhao Tan
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引用次数: 612

Abstract

Post-hoc explanations of machine learning models are crucial for people to understand and act on algorithmic predictions. An intriguing class of explanations is through counterfactuals, hypothetical examples that show people how to obtain a different prediction. We posit that effective counterfactual explanations should satisfy two properties: feasibility of the counterfactual actions given user context and constraints, and diversity among the counterfactuals presented. To this end, we propose a framework for generating and evaluating a diverse set of counterfactual explanations based on determinantal point processes. To evaluate the actionability of counterfactuals, we provide metrics that enable comparison of counterfactual-based methods to other local explanation methods. We further address necessary tradeoffs and point to causal implications in optimizing for counterfactuals. Our experiments on four real-world datasets show that our framework can generate a set of counterfactuals that are diverse and well approximate local decision boundaries, outperforming prior approaches to generating diverse counterfactuals. We provide an implementation of the framework at https://github.com/microsoft/DiCE.
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通过不同的反事实解释解释机器学习分类器
对机器学习模型的事后解释对于人们理解算法预测并采取行动至关重要。一类有趣的解释是通过反事实,即假设的例子,向人们展示如何获得不同的预测。我们假设有效的反事实解释应该满足两个属性:给定用户上下文和约束的反事实行为的可行性,以及所呈现的反事实之间的多样性。为此,我们提出了一个框架,用于生成和评估基于确定性点过程的各种反事实解释。为了评估反事实的可操作性,我们提供了能够将基于反事实的方法与其他本地解释方法进行比较的指标。我们进一步解决了必要的权衡,并指出了优化反事实的因果影响。我们在四个真实世界数据集上的实验表明,我们的框架可以生成一组不同的反事实,并且很好地近似于局部决策边界,优于之前生成不同反事实的方法。我们在https://github.com/microsoft/DiCE上提供了该框架的实现。
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