Autonomous particles

01/24/2023
by   Nikola Andrejic, et al.
0

Consider a reinforcement learning problem where an agent has access to a very large amount of information about the environment, but it can only take very few actions to accomplish its task and to maximize its reward. Evidently, the main problem for the agent is to learn a map from a very high-dimensional space (which represents its environment) to a very low-dimensional space (which represents its actions). The high-to-low dimensional map implies that most of the information about the environment is irrelevant for the actions to be taken, and only a small fraction of information is relevant. In this paper we argue that the relevant information need not be learned by brute force (which is the standard approach), but can be identified from the intrinsic symmetries of the system. We analyze in details a reinforcement learning problem of autonomous driving, where the corresponding symmetry is the Galilean symmetry, and argue that the learning task can be accomplished with very few relevant parameters, or, more precisely, invariants. For a numerical demonstration, we show that the autonomous vehicles (which we call autonomous particles since they describe very primitive vehicles) need only four relevant invariants to learn how to drive very well without colliding with other particles. The simple model can be easily generalized to include different types of particles (e.g. for cars, for pedestrians, for buildings, for road signs, etc.) with different types of relevant invariants describing interactions between them. We also argue that there must exist a field theory description of the learning system where autonomous particles would be described by fermionic degrees of freedom and interactions mediated by the relevant invariants would be described by bosonic degrees of freedom.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/08/2017

Deep Reinforcement Learning framework for Autonomous Driving

Reinforcement learning is considered to be a strong AI paradigm which ca...
research
03/09/2020

Discovering Symmetry Invariants and Conserved Quantities by Interpreting Siamese Neural Networks

In this paper, we introduce interpretable Siamese Neural Networks (SNN) ...
research
03/26/2021

Increasing the Efficiency of Policy Learning for Autonomous Vehicles by Multi-Task Representation Learning

Driving in a dynamic, multi-agent, and complex urban environment is a di...
research
06/08/2004

Using Self-Organising Mappings to Learn the Structure of Data Manifolds

In this paper it is shown how to map a data manifold into a simpler form...
research
04/01/1997

Lifeworld Analysis

We argue that the analysis of agent/environment interactions should be e...
research
06/14/2013

Symmetries in LDDMM with higher order momentum distributions

In some implementations of the Large Deformation Diffeomorphic Metric Ma...
research
01/03/2022

Descriptors for Machine Learning Model of Generalized Force Field in Condensed Matter Systems

We outline the general framework of machine learning (ML) methods for mu...

Please sign up or login with your details

Forgot password? Click here to reset