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DU-Shapley: A Shapley Value Proxy for Efficient Dataset Valuation

About

We consider the dataset valuation problem, that is, the problem of quantifying the incremental gain, to some relevant pre-defined utility of a machine learning task, of aggregating an individual dataset to others. The Shapley value is a natural tool to perform dataset valuation due to its formal axiomatic justification, which can be combined with Monte Carlo integration to overcome the computational tractability challenges. Such generic approximation methods, however, remain expensive in some cases. In this paper, we exploit the knowledge about the structure of the dataset valuation problem to devise more efficient Shapley value estimators. We propose a novel approximation, referred to as discrete uniform Shapley, which is expressed as an expectation under a discrete uniform distribution with support of reasonable size. We justify the relevancy of the proposed framework via asymptotic and non-asymptotic theoretical guarantees and illustrate its benefits via an extensive set of numerical experiments.

Felipe Garrido-Lucero, Benjamin Heymann, Maxime Vono, Patrick Loiseau, Vianney Perchet• 2023

Related benchmarks

TaskDatasetResultRank
Noisy label detectionIMDB embedding
NLD32
12
Dataset RemovalCIFAR10 embedding
DR61
12
Dataset Removalbbc-embedding
DR0.89
12
Dataset RemovalIMDB embedding
DR76
12
Noisy label detectionCIFAR10 embedding
NLD14
12
Noisy label detectionbbc-embedding
NLD Score0.18
12
Dataset AdditionCIFAR10 embedding
DA Score0.14
12
Dataset Additionbbc-embedding
DA Score11
12
Dataset AdditionIMDB embedding
DA Score34
12
Shapley value approximationAdult
MSE6.10e-4
6
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