Learning stochastic dynamics and predicting emergent behavior using transformers

02/17/2022
by   Corneel Casert, et al.
0

We show that a neural network originally designed for language processing can learn the dynamical rules of a stochastic system by observation of a single dynamical trajectory of the system, and can accurately predict its emergent behavior under conditions not observed during training. We consider a lattice model of active matter undergoing continuous-time Monte Carlo dynamics, simulated at a density at which its steady state comprises small, dispersed clusters. We train a neural network called a transformer on a single trajectory of the model. The transformer, which we show has the capacity to represent dynamical rules that are numerous and nonlocal, learns that the dynamics of this model consists of a small number of processes. Forward-propagated trajectories of the trained transformer, at densities not encountered during training, exhibit motility-induced phase separation and so predict the existence of a nonequilibrium phase transition. Transformers have the flexibility to learn dynamical rules from observation without explicit enumeration of rates or coarse-graining of configuration space, and so the procedure used here can be applied to a wide range of physical systems, including those with large and complex dynamical generators.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/31/2023

Continuous Spatiotemporal Transformers

Modeling spatiotemporal dynamical systems is a fundamental challenge in ...
research
08/16/2023

Can Transformers Learn Optimal Filtering for Unknown Systems?

Transformers have demonstrated remarkable success in natural language pr...
research
03/15/2023

Estimating Parameters of Large CTMP from Single Trajectory with Application to Stochastic Network Epidemics Models

Graph dynamical systems (GDS) model dynamic processes on a (static) grap...
research
08/02/2021

Representation learning for neural population activity with Neural Data Transformers

Neural population activity is theorized to reflect an underlying dynamic...
research
09/02/2019

Evolutionary reinforcement learning of dynamical large deviations

We show how to calculate dynamical large deviations using evolutionary r...
research
05/18/2021

Arrested phase separation in double-exchange models: machine-learning enabled large-scale simulation

We present large-scale dynamical simulations of electronic phase separat...
research
02/03/2021

Microscopic Patterns in the 2D Phase-Field-Crystal Model

Using the recently developed theory of rigorously validated numerics, we...

Please sign up or login with your details

Forgot password? Click here to reset