TT-FSI: Scalable Faithful Shapley Interactions via Tensor-Train

Abstract

The Faithful Shapley Interaction (FSI) index uniquely satisfies the faithfulness axiom among Shapley interaction indices, but computing FSI requires O(d · 2d) time and existing implementations use O(4d) memory. We present TT-FSI, which exploits FSI's algebraic structure via Matrix Product Operators (MPO). Our main theoretical contribution is proving that the linear operator v FSI(v) admits an MPO representation with TT-rank O( d), enabling an efficient sweep algorithm with O(2 d3 · 2d) time and O( d2) core storage an exponential improvement over existing methods. Experiments on six datasets (d=8 to d=20) demonstrate up to 280× speedup over baseline, 85× over SHAP-IQ, and 290× memory reduction. TT-FSI scales to d=20 (1M coalitions) where all competing methods fail.

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