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Jeudi 9 novembre 2023, 14h00Passé
Novembre 2023
Jeudi 9
14:00 - 15:30

e. 212, Bouygues, CentraleSupélec

9 rue Joliot Curie 91190 Gif-sur-Yvette
  • Essonne
  • Ile-de-France

MICS Seminar: Rémi Flamary

--Rémi Flamary (Ecole Polytechnique) : SNEkhorn - Dimension Reduction with Symmetric Entropic Affinities
Jeudi 9 novembre 2023, 14h00Passé

Many approaches in machine learning rely on a weighted graph to encode the similarities between samples in a dataset. Entropic affinities (EAs), which are notably used in the popular Dimensionality Reduction (DR) algorithm t-SNE, are particular instances of such graphs. To ensure robustness to heterogeneous sampling densities, EAs assign a kernel bandwidth parameter to every sample in such a way that the entropy of each row in the affinity matrix is kept constant at a specific value, whose exponential is known as perplexity. EAs are inherently asymmetric and row-wise stochastic, but they are used in DR approaches after undergoing heuristic symmetrization methods that violate both the row-wise constant entropy and stochasticity properties. In this work, we uncover a novel characterization of EA as an optimal transport problem, allowing a natural symmetrization that can be computed efficiently using dual ascent. The corresponding novel affinity matrix derives advantages from symmetric doubly stochastic normalization in terms of clustering performance, while also effectively controlling the entropy of each row thus making it particularly robust to varying noise levels. Following, we present a new DR algorithm, SNEkhorn, that leverages this new affinity matrix. We show its clear superiority to state-of-the-art approaches with several indicators on both synthetic and real-world datasets.

Joint work with Hugues Van Assel, Titouan Vayer, and Nicolas Courty

machine learning

À propos du lieu

e. 212, Bouygues, CentraleSupélec
9 rue Joliot Curie 91190 Gif-sur-Yvette
  • Essonne
  • Ile-de-France