19/08/2021

Learning Groupwise Explanations for Black-Box Models

Jingyue Gao, Xiting Wang, Yasha Wang, Yulan Yan, Xing Xie

Keywords: Machine Learning, Explainable/Interpretable Machine Learning

Abstract: We study two user demands that are important during the exploitation of explanations in practice: 1) understanding the overall model behavior faithfully with limited cognitive load and 2) predicting the model behavior accurately on unseen instances. We illustrate that the two user demands correspond to two major sub-processes in the human cognitive process and propose a unified framework to fulfill them simultaneously. Given a local explanation method, our framework jointly 1) learns a limited number of groupwise explanations that interpret the model behavior on most instances with high fidelity and 2) specifies the region where each explanation applies. Experiments on six datasets demonstrate the effectiveness of our method.

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