Date
February 17 (Tue) 11:00 - 12:00, 2026 (JST)
Speaker
  • Yuichi Ike (Associate Professor, Graduate School of Mathematical Sciences, The University of Tokyo)
Language
English
Host
Yuto Yamamoto

Persistent homology is one of the main tools in topological data analysis (TDA), which encodes the topological features of given data into persistence diagrams. It has been successfully applied to various fields such as material science and computer graphics. In this talk, I will provide an overview of persistent homology and its applications. Furthermore, I will also discuss its integration with machine learning, specifically how persistent-homology-based loss functions can be used to regularize the topological structure of parameters.

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