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InfoOT: Information Maximizing Optimal Transport

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2023-07-23

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JMLR
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C.-Y. Chuang, S. Jegelka, and D. Alvarez-Melis. "InfoOT: Information Maximizing Optimal Transport". In: Proc. 40th International Conference on Machine Learning. ICML. Ed. by A. Krause, E. Brunskill, K. Cho, B. Engelhardt, S. Sabato,and J. Scarlett. Vol. 202. Proceedings of Machine Learning Research. PMLR, 2023.

Abstract

Optimal transport aligns samples across distributions by minimizing the transportation cost between them, e.g., the geometric distances. Yet, it ignores coherence structure in the data such as clusters, does not handle outliers well, and cannot integrate new data points. To address these drawbacks, we propose InfoOT, an informationtheoretic extension of optimal transport that maximizes the mutual information between domains while minimizing geometric distances. The resulting objective can still be formulated as a (generalized) optimal transport problem, and can be efficiently solved by projected gradient descent. This formulation yields a new projection method that is robust to outliers and generalizes to unseen samples. Empirically, InfoOT improves the quality of alignments across benchmarks in domain adaptation, cross-domain retrieval, and singlecell alignment. The code is available at https://github.com/chingyaoc/InfoOT.

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