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Communication Dans Un Congrès Année : 2023

Multi-source domain adaptation through dataset dictionary learning in wasserstein space

Résumé

This paper seeks to solve Multi-Source Domain Adaptation (MSDA), which aims to mitigate data distribution shifts when transferring knowledge from multiple labeled source domains to an unlabeled target domain. We propose a novel MSDA framework based on dictionary learning and optimal transport. We interpret each domain in MSDA as an empirical distribution. As such, we express each domain as a Wasserstein barycenter of dictionary atoms, which are empirical distributions. We propose a novel algorithm, DaDiL, for learning via mini-batches: (i) atom distributions; (ii) a matrix of barycentric coordinates. Based on our dictionary, we propose two novel methods for MSDA: DaDil-R, based on the reconstruction of labeled samples in the target domain, and DaDiL-E, based on the ensembling of classifiers learned on atom distributions. We evaluate our methods in 3 benchmarks: Caltech-Office, Office 31, and CRWU, where we improved previous state-of-the-art by 3.15%, 2.29%, and 7.71% in classification performance. Finally, we show that interpolations in the Wasserstein hull of learned atoms provide data that can generalize to the target domain.
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lundi 4 novembre 2024
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lundi 4 novembre 2024
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lundi 4 novembre 2024
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Dates et versions

cea-04370922 , version 1 (03-01-2024)

Identifiants

Citer

Eduardo Fernandes Montesuma, Fred Maurice Ngole Mboula, Antoine Souloumiac. Multi-source domain adaptation through dataset dictionary learning in wasserstein space. ECAI 2023 - European Conference on Artificial Intelligence, Sep 2023, Cracovie, Poland. pp.1739- 1746, ⟨10.3233/FAIA230459⟩. ⟨cea-04370922⟩
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