Attentional Policies for Cross-Context Multi-Agent Reinforcement Learning

05/31/2019
by   Matthew A. Wright, et al.
0

Many potential applications of reinforcement learning in the real world involve interacting with other agents whose numbers vary over time. We propose new neural policy architectures for these multi-agent problems. In contrast to other methods of training an individual, discrete policy for each agent and then enforcing cooperation through some additional inter-policy mechanism, we follow the spirit of recent work on the power of relational inductive biases in deep networks by learning multi-agent relationships at the policy level via an attentional architecture. In our method, all agents share the same policy, but independently apply it in their own context to aggregate the other agents' state information when selecting their next action. The structure of our architectures allow them to be applied on environments with varying numbers of agents. We demonstrate our architecture on a benchmark multi-agent autonomous vehicle coordination problem, obtaining superior results to a full-knowledge, fully-centralized reference solution, and significantly outperforming it when scaling to large numbers of agents.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/22/2018

Scalable Centralized Deep Multi-Agent Reinforcement Learning via Policy Gradients

In this paper, we explore using deep reinforcement learning for problems...
research
02/06/2019

CESMA: Centralized Expert Supervises Multi-Agents

We consider the reinforcement learning problem of training multiple agen...
research
01/06/2023

Multi-Agent Reinforcement Learning for Fast-Timescale Demand Response of Residential Loads

To integrate high amounts of renewable energy resources, electrical powe...
research
10/05/2019

Attention-based Fault-tolerant Approach for Multi-agent Reinforcement Learning Systems

The aim of multi-agent reinforcement learning systems is to provide inte...
research
05/27/2022

ALMA: Hierarchical Learning for Composite Multi-Agent Tasks

Despite significant progress on multi-agent reinforcement learning (MARL...
research
06/01/2022

DM^2: Distributed Multi-Agent Reinforcement Learning for Distribution Matching

Current approaches to multi-agent cooperation rely heavily on centralize...
research
09/14/2021

DSDF: An approach to handle stochastic agents in collaborative multi-agent reinforcement learning

Multi-Agent reinforcement learning has received lot of attention in rece...

Please sign up or login with your details

Forgot password? Click here to reset