Evaluating Explanations: How Much Do Explanations from the Teacher Aid Students?
Author(s) -
Danish Pruthi,
Rachit Bansal,
Bhuwan Dhingra,
Livio Baldini Soares,
Michael J. Collins,
Zachary C. Lipton,
Graham Neubig,
William W. Cohen
Publication year - 2022
Publication title -
transactions of the association for computational linguistics
Language(s) - English
Resource type - Journals
ISSN - 2307-387X
DOI - 10.1162/tacl_a_00465
Subject(s) - computer science , salient , attribution , artificial intelligence , test (biology) , authorship attribution , value (mathematics) , question answering , data science , machine learning , mathematics education , psychology , social psychology , paleontology , biology
While many methods purport to explain predictions by highlighting salient features, what aims these explanations serve and how they ought to be evaluated often go unstated. In this work, we introduce a framework to quantify the value of explanations via the accuracy gains that they confer on a student model trained to simulate a teacher model. Crucially, the explanations are available to the student during training, but are not available at test time. Compared with prior proposals, our approach is less easily gamed, enabling principled, automatic, model-agnostic evaluation of attributions. Using our framework, we compare numerous attribution methods for text classification and question answering, and observe quantitative differences that are consistent (to a moderate to high degree) across different student model architectures and learning strategies.1
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