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Autori principali: Bénesse, Clément, Mesana, Patrick, Gautier, Athénaïs, Gambs, Sébastien
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2506.04026
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author Bénesse, Clément
Mesana, Patrick
Gautier, Athénaïs
Gambs, Sébastien
author_facet Bénesse, Clément
Mesana, Patrick
Gautier, Athénaïs
Gambs, Sébastien
contents In machine learning, knowing the impact of a given datum on model training is a fundamental task referred to as Data Valuation. Building on previous works from the literature, we have designed a novel canonical decomposition allowing practitioners to analyze any data valuation method as the combination of two parts: a utility function that captures characteristics from a given model and an aggregation procedure that merges such information. We also propose to use Gaussian Processes as a means to easily access the utility function on ``sub-models'', which are models trained on a subset of the training set. The strength of our approach stems from both its theoretical grounding in Bayesian theory, and its practical reach, by enabling fast estimation of valuations thanks to efficient update formulae.
format Preprint
id arxiv_https___arxiv_org_abs_2506_04026
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle On the Usage of Gaussian Process for Efficient Data Valuation
Bénesse, Clément
Mesana, Patrick
Gautier, Athénaïs
Gambs, Sébastien
Machine Learning
In machine learning, knowing the impact of a given datum on model training is a fundamental task referred to as Data Valuation. Building on previous works from the literature, we have designed a novel canonical decomposition allowing practitioners to analyze any data valuation method as the combination of two parts: a utility function that captures characteristics from a given model and an aggregation procedure that merges such information. We also propose to use Gaussian Processes as a means to easily access the utility function on ``sub-models'', which are models trained on a subset of the training set. The strength of our approach stems from both its theoretical grounding in Bayesian theory, and its practical reach, by enabling fast estimation of valuations thanks to efficient update formulae.
title On the Usage of Gaussian Process for Efficient Data Valuation
topic Machine Learning
url https://arxiv.org/abs/2506.04026