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Talk

To Predict is NOT to Explain

  • Justin Curry (University of Albany, USA)
E1 05 (Leibniz-Saal)

Abstract

Modern day neural networks are amazing prediction machines, but to get at explanations one has to understand higher order relations between data as they fiber over their predictions. In this talk I will connect the urgent questions of modern data science with the distinguished history of applied topology by considering simple geometric examples and probing them with increasingly complicated tools. Ideas from dynamics, stratification theory and sheaf theory will be introduced in a loose and intuitive fashion to trace future directions for research.

Antje Vandenberg

MPI for Mathematics in the Sciences Contact via Mail

Diaaeldin Taha

MPI for Mathematics in the Sciences Contact via Mail

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