Influence functions efficiently estimate the effect of removing a single training data point on a model's learned parameters. While influence estimates align well with leave-one-out retraining for linear models, recent works have shown this alignment is often poor in neural networks. In this work, we investigate the specific factors that cause this discrepancy by decomposing it into five separate terms. We study the contributions of each term on a variety of architectures and datasets and how they vary with factors such as network width and training time. While practical influence function estimates may be a poor match to leave-one-out retraining for nonlinear networks, we show that they are often a good approximation to a different object we term the proximal Bregman response function (PBRF). Since the PBRF can still be used to answer many of the questions motivating influence functions such as identifying influential or mislabeled examples, our results suggest that current algorithms for influence function estimation give more informative results than previous error analyses would suggest.
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Univ Western Australia, Royal Perth Hosp, Emergency Med, Perth, WA, Australia
Harry Perkins Inst Med Res, Ctr Clin Res Emergency Med, Perth, WA, AustraliaUniv Western Australia, Royal Perth Hosp, Emergency Med, Perth, WA, Australia
Fatovich, Daniel M.
Parish, Austin J.
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Lincoln Med Ctr, Emergency Med, Bronx, NY USA
Meta Res Innovat Ctr METRICS, Stanford, CA USAUniv Western Australia, Royal Perth Hosp, Emergency Med, Perth, WA, Australia
Parish, Austin J.
Milne, Wm K.
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Western Univ, Schulich Sch Med & Dent, Dept Med, London, ON, CanadaUniv Western Australia, Royal Perth Hosp, Emergency Med, Perth, WA, Australia