VCNet: A self-explaining model for realistic counterfactual generation

Victor Guyomard, Franccoise Fessant, Thomas Guyet, Tassadit Bouadi, A. Termier
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引用次数: 6

Abstract

Counterfactual explanation is a common class of methods to make local explanations of machine learning decisions. For a given instance, these methods aim to find the smallest modification of feature values that changes the predicted decision made by a machine learning model. One of the challenges of counterfactual explanation is the efficient generation of realistic counterfactuals. To address this challenge, we propose VCNet-Variational Counter Net-a model architecture that combines a predictor and a counterfactual generator that are jointly trained, for regression or classification tasks. VCNet is able to both generate predictions, and to generate counterfactual explanations without having to solve another minimisation problem. Our contribution is the generation of counterfactuals that are close to the distribution of the predicted class. This is done by learning a variational autoencoder conditionally to the output of the predictor in a join-training fashion. We present an empirical evaluation on tabular datasets and across several interpretability metrics. The results are competitive with the state-of-the-art method.
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VCNet:现实反事实生成的自解释模型
反事实解释是对机器学习决策进行局部解释的常见方法。对于给定的实例,这些方法旨在找到改变机器学习模型所做出的预测决策的特征值的最小修改。反事实解释的挑战之一是有效地生成现实的反事实。为了应对这一挑战,我们提出了vcnet -变分计数器-一种模型架构,它结合了联合训练的预测器和反事实生成器,用于回归或分类任务。VCNet既可以生成预测,也可以生成反事实的解释,而无需解决另一个最小化问题。我们的贡献是生成接近预测类分布的反事实。这是通过以联合训练的方式有条件地学习变分自编码器到预测器的输出来完成的。我们提出了对表格数据集和跨几个可解释性指标的实证评估。其结果可与最先进的方法相媲美。
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