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Counterfactual Evaluation for Explainable AI

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arxiv 2109.01962 v1 pith:ZKHQAJNS submitted 2021-09-05 cs.CL

Counterfactual Evaluation for Explainable AI

classification cs.CL
keywords counterfactualfaithfulnesscounterfactualserasure-basedevaluationexplainableexplanationsintroduce
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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While recent years have witnessed the emergence of various explainable methods in machine learning, to what degree the explanations really represent the reasoning process behind the model prediction -- namely, the faithfulness of explanation -- is still an open problem. One commonly used way to measure faithfulness is \textit{erasure-based} criteria. Though conceptually simple, erasure-based criterion could inevitably introduce biases and artifacts. We propose a new methodology to evaluate the faithfulness of explanations from the \textit{counterfactual reasoning} perspective: the model should produce substantially different outputs for the original input and its corresponding counterfactual edited on a faithful feature. Specially, we introduce two algorithms to find the proper counterfactuals in both discrete and continuous scenarios and then use the acquired counterfactuals to measure faithfulness. Empirical results on several datasets show that compared with existing metrics, our proposed counterfactual evaluation method can achieve top correlation with the ground truth under diffe

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  1. Explainable bank failure prediction models: Counterfactual explanations to reduce the failure risk

    cs.LG 2024-07 unverdicted novelty 4.0

    Compares counterfactual generation methods with balancing strategies on bank failure data, finding NICF with cost-sensitive learning produces the highest quality explanations on validity, proximity, and sparsity.