Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Axiomatic On-Manifold Shapley via Optimal Generative Flows

About

Shapley-based attribution is critical for post-hoc XAI but suffers from off-manifold artifacts due to heuristic baselines. While generative methods attempt to address this, they often introduce geometric inefficiency and discretization drift. We propose a formal theory of on-manifold Aumann-Shapley attributions driven by optimal generative flows. We prove a representation theorem establishing the gradient line integral as the unique functional satisfying efficiency and geometric axioms, notably reparameterization invariance. To resolve path ambiguity, we select the kinetic-energy-minimizing Wasserstein-2 geodesic transporting a prior to the data distribution. This yields a canonical attribution family that recovers classical Shapley for additive models and admits provable stability bounds against flow approximation errors. By reframing baseline selection as a variational problem, our method experimentally outperforms baselines, achieving strict manifold adherence via vanishing Flow Consistency Error and superior semantic alignment characterized by Structure-Aware Total Variation. Our code is on https://github.com/cenweizhang/OTFlowSHAP.

Cenwei Zhang, Lin Zhu, Manxi Lin, Lei You• 2026

Related benchmarks

TaskDatasetResultRank
Feature AttributionCIFAR-10 32 x 32 (test)
Structure SATV0.062
6
Feature AttributionCelebA-HQ 256 x 256 (test)
Structure SATV0.003
6
Showing 2 of 2 rows

Other info

Follow for update