SHAP values via sparse Fourier representation

2
Citations
#1102
in NeurIPS 2025
of 5858 papers
3
Authors
4
Data Points

Abstract

SHAP (SHapley Additive exPlanations) values are a widely used method for local feature attribution in interpretable and explainable AI. We propose an efficient two-stage algorithm for computing SHAP values in both black-box setting and tree-based models. Motivated by spectral bias in real-world predictors, we first approximate models using compact Fourier representations, exactly for trees and approximately for black-box models. In the second stage, we introduce a closed-form formula for {\em exactly} computing SHAP values using the Fourier representation, that ``linearizes'' the computation into a simple summation and is amenable to parallelization. As the Fourier approximation is computed only once, our method enables amortized SHAP value computation, achieving significant speedups over existing methods and a tunable trade-off between efficiency and precision.

Citation History

Jan 25, 2026
0
Jan 27, 2026
0
Jan 27, 2026
0
Jan 30, 2026
2+2