[Statlist] Reminder: DACO-FDS Seminar talk with Quentin Berthet, Google DeepMind - 2 November 2023

Maurer Letizia |et|z|@m@urer @end|ng |rom ethz@ch
Wed Nov 1 07:23:14 CET 2023


We are pleased to announce and invite you to the following joint talk in our DACO-FDS seminar series:

„Perturbed Optimizers for Machine Learning“
by Quentin Berthet, Google DeepMind

Date and Time: Thursday, 2 November 2023, 16.15 - 17.15 (Zurich)
Place: ETH Zurich, HG G 19.1

Abstract: Machine learning pipelines often rely on optimizers procedures to make discrete decisions (e.g., sorting, picking closest neighbors, or shortest paths). Although these discrete decisions are easily computed in a forward manner, they break the back-propagation of computational graphs. In order to expand the scope of learning problems that can be solved in an end-to-end fashion, we propose a systematic method to transform optimizers into operations that are differentiable and never locally constant. Our approach relies on stochastically perturbed optimizers, and can be used readily within existing solvers. Their derivatives can be evaluated efficiently, and smoothness tuned via the chosen noise amplitude. We also show how this framework can be connected to a family of losses developed in structured prediction, and give theoretical guarantees for their use in learning tasks. We demonstrate experimentally the performance of our approach on various tasks, including recent applications on protein sequences.

Organisers: A. Bandeira, H. Bölcskei, P. Bühlmann, J. Peters, F. Yang

Seminar website: https://math.ethz.ch/news-and-events/events/research-seminars/daco-seminar.html
Seminar website: https://math.ethz.ch/sfs/news-and-events/data-science-seminar.html





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