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Real-Time Explanations for Tabular Foundation Models

Luan Borges Teodoro Reis Sena
Francisco Galuppo Azevedo
Main:5 Pages
1 Figures
Bibliography:1 Pages
6 Tables
Appendix:1 Pages
Abstract

Interpretability is central for scientific machine learning, as understanding \emph{why} models make predictions enables hypothesis generation and validation. While tabular foundation models show strong performance, existing explanation methods like SHAP are computationally expensive, limiting interactive exploration. We introduce ShapPFN, a foundation model that integrates Shapley value regression directly into its architecture, producing both predictions and explanations in a single forward pass. On standard benchmarks, ShapPFN achieves competitive performance while producing high-fidelity explanations (R2R^2=0.96, cosine=0.99) over 1000\times faster than KernelSHAP (0.06s vs 610s). Our code is available atthis https URL

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