Date
Fri, 14 Mar 2025
15:00
Location
L4
Speaker
Mathieu Carrière
Organisation
Centre Inria d'Université Côte d'Azur

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Multiparameter persistent homology is a generalization of persistent homology that allows for more than a single filtration function. Such constructions arise naturally when considering data with outliers or variations in density, time-varying data, or functional data. Even though its algebraic roots are substantially more complicated, several new invariants have been proposed recently. In this talk, I will go over such invariants, as well as their stability, vectorizations and implementations in statistical machine learning.

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