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Interpolating between Clustering and Dimensionality Reduction with Gromov-Wasserstein

5 October 2023
Hugues van Assel
Cédric Vincent-Cuaz
Titouan Vayer
Rémi Flamary
Nicolas Courty
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Abstract

We present a versatile adaptation of existing dimensionality reduction (DR) objectives, enabling the simultaneous reduction of both sample and feature sizes. Correspondances between input and embedding samples are computed through a semi-relaxed Gromov-Wasserstein optimal transport (OT) problem. When the embedding sample size matches that of the input, our model recovers classical popular DR models. When the embedding's dimensionality is unconstrained, we show that the OT plan delivers a competitive hard clustering. We emphasize the importance of intermediate stages that blend DR and clustering for summarizing real data and apply our method to visualize datasets of images.

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