Emergent learning in physical systems as feedback-based aging in a glassy landscape

09/08/2023
by   Vidyesh Rao Anisetti, et al.
0

By training linear physical networks to learn linear transformations, we discern how their physical properties evolve due to weight update rules. Our findings highlight a striking similarity between the learning behaviors of such networks and the processes of aging and memory formation in disordered and glassy systems. We show that the learning dynamics resembles an aging process, where the system relaxes in response to repeated application of the feedback boundary forces in presence of an input force, thus encoding a memory of the input-output relationship. With this relaxation comes an increase in the correlation length, which is indicated by the two-point correlation function for the components of the network. We also observe that the square root of the mean-squared error as a function of epoch takes on a non-exponential form, which is a typical feature of glassy systems. This physical interpretation suggests that by encoding more detailed information into input and feedback boundary forces, the process of emergent learning can be rather ubiquitous and, thus, serve as a very early physical mechanism, from an evolutionary standpoint, for learning in biological systems.

READ FULL TEXT

page 2

page 10

research
06/23/2020

Learning Physical Constraints with Neural Projections

We propose a new family of neural networks to predict the behaviors of p...
research
03/22/2022

Learning by non-interfering feedback chemical signaling in physical networks

Both non-neural and neural biological systems can learn. So rather than ...
research
09/15/2017

Gaussian Process Latent Force Models for Learning and Stochastic Control of Physical Systems

This paper is concerned with estimation and stochastic control in physic...
research
02/05/2021

Global minimization via classical tunneling assisted by collective force field formation

Simple dynamical models can produce intricate behaviors in large network...
research
07/05/2023

Machine learning at the mesoscale: a computation-dissipation bottleneck

The cost of information processing in physical systems calls for a trade...
research
08/16/2018

Deeper Image Quality Transfer: Training Low-Memory Neural Networks for 3D Images

In this paper we address the memory demands that come with the processin...

Please sign up or login with your details

Forgot password? Click here to reset