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FastSHAP: Real-Time Shapley Value Estimation

About

Shapley values are widely used to explain black-box models, but they are costly to calculate because they require many model evaluations. We introduce FastSHAP, a method for estimating Shapley values in a single forward pass using a learned explainer model. FastSHAP amortizes the cost of explaining many inputs via a learning approach inspired by the Shapley value's weighted least squares characterization, and it can be trained using standard stochastic gradient optimization. We compare FastSHAP to existing estimation approaches, revealing that it generates high-quality explanations with orders of magnitude speedup.

Neil Jethani, Mukund Sudarshan, Ian Covert, Su-In Lee, Rajesh Ranganath• 2021

Related benchmarks

TaskDatasetResultRank
Explanation FaithfulnessImageNet 2015 (test)
AOPC0.683
22
SegmentationImageNet segmentation
Pixel Accuracy73.92
22
Attribution Performance EvaluationImageNet 5,000 images (val)
Positive AUC0.4591
9
Attribution Performance EvaluationAnnotated Image Segmentation
Pixel Accuracy76.74
9
Explainable AI (XAI) Inference EfficiencyImageNet (1000 images)
Inference Time (s)11.6
7
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