Learning dynamical models from stochastic trajectories

29 May - 11h30 - 23h59

Centre de recherche - Paris

Amphithéâtre Marie Curie

Pavillon Curie, 11 rue Pierre & Marie Curie, Paris 5ème

Description

The dynamics of biological systems, from proteins to cells to organisms, is complex and stochastic. To decipher their physical laws, we need to bridge between experimental observations and theoretical modeling. Thanks to progress in microscopy and tracking, there is today an abundance of experimental trajectories reflecting these dynamical laws. Inferring physical models from imperfect experimental data, however, is challenging and currently remains a bottleneck to data-driven biophysics. In this talk, I will present a set of tools developed to bridge this gap and permit robust and universal inference of stochastic dynamical models from experimental trajectories. These methods are rooted in an information-theoretical framework that quantifies how much can be inferred from
trajectories that are short, partial and noisy. They permit the efficient inference of dynamical models for overdamped and underdamped Langevin systems, as well as the inference of entropy production rates. I finally present early applications of these techniques, as well as future research directions.

Organizers

PCC Seminar Team

Speakers

Pierre Ronceray

Invited by

Mathieu Coppey

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