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Poster
in
Workshop: Beyond Bayes: Paths Towards Universal Reasoning Systems

P19: Logical Satisfiability of Counterfactuals for Faithful Explanations in NLI

Suzanna Sia


Abstract:

Authors: Suzanna Sia, Anton Belyy, Amjad Almahairi, Madian Khabsa, Luke Zettlemoyer, Lambert Mathias

Abstract: Evaluating an explanation's faithfulness is desired for many reasons such as trust, interpretability and diagnosing the sources of model's errors. In this work, which focuses on the NLI task, we introduce the methodology of Faithfulness-through-Counterfactuals, which first generates a counterfactual hypothesis based on the logical predicates expressed in the explanation, and then evaluates if the model's prediction on the counterfactual is consistent with that expressed logic (i.e. if the new formula is \textit{logically satisfiable}). In contrast to existing approaches, this does not require any explanations for training a separate verification model. We first validate the efficacy of automatic counterfactual hypothesis generation, leveraging on the few-shot priming paradigm. Next, we conduct a sensitivity analysis to validate that our metric is sensitive to unfaithful explanations.

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