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Functional Decomposition and Shapley Interactions for Interpreting Survival Models

MCML Authors

Fabian Fumagalli

Fabian Fumagalli

Prof. Dr.

Thomas Bayes Fellow

* Former Thomas Bayes Fellow

Abstract

Hazard and survival functions are natural, interpretable targets in time-to-event prediction, but their inherent non-additivity fundamentally limits standard additive explanation methods. We introduce Survival Functional Decomposition (SurvFD), a principled approach for analyzing feature interactions in machine learning survival models. By decomposing higher-order effects into time-dependent and time-independent components, SurvFD offers a previously unrecognized perspective on survival explanations, explicitly characterizing when and why additive explanations fail. Building on this theoretical decomposition, we propose SurvSHAP-IQ, which extends Shapley interactions to time-indexed functions, providing a practical estimator for higher-order, time-dependent interactions. Together, SurvFD and SurvSHAP-IQ establish an interaction- and time-aware interpretability approach for survival modeling, with broad applicability across time-to-event prediction tasks.

misc LBF+26


Preprint

Feb. 2026

Authors

S. H. Langbein • H. Baniecki • F. Fumagalli • N. Koenen • M. N. Wright • J. Herbinger

Links

arXiv

Research Area

 A1 | Statistical Foundations & Explainability

BibTeXKey: LBF+26

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