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Learning to Explain: An Information-Theoretic Perspective on Model Interpretation

机译:学习解释:模型解释的信息理论视角

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We introduce instancewise feature selection as a methodology for model interpretation. Our method is based on learning a function to extract a subset of features that are most informative for each given example. This feature selector is trained to maximize the mutual information between selected features and the response variable, where the conditional distribution of the response variable given the input is the model to be explained. We develop an efficient variational approximation to the mutual information, and show the effectiveness of our method on a variety of synthetic and real data sets using both quantitative metrics and human evaluation.
机译:我们介绍实例化特征选择作为模型解释的方法。我们的方法基于学习一个函数以提取对每个给定示例而言最有用的特征子集。训练该特征选择器以最大化所选特征和响应变量之间的相互信息,其中给定输入的响应变量的条件分布是要说明的模型。我们开发了一种有效的互信息变分近似方法,并使用定量指标和人工评估对多种合成和真实数据集展示了我们方法的有效性。

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