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Bayesian Influence Functions for Hessian-Free Data Attribution

30 September 2025
Philipp Alexander Kreer
Wilson Wu
Maxwell Adam
Zach Furman
Jesse Hoogland
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ArXiv (abs)PDFHTMLGithub (165★)
Main:9 Pages
19 Figures
Bibliography:3 Pages
4 Tables
Appendix:20 Pages
Abstract

Classical influence functions face significant challenges when applied to deep neural networks, primarily due to non-invertible Hessians and high-dimensional parameter spaces. We propose the local Bayesian influence function (BIF), an extension of classical influence functions that replaces Hessian inversion with loss landscape statistics that can be estimated via stochastic-gradient MCMC sampling. This Hessian-free approach captures higher-order interactions among parameters and scales efficiently to neural networks with billions of parameters. We demonstrate state-of-the-art results on predicting retraining experiments.

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