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

09/14/2021
by   Satheesh K. Perepu, et al.
0

Multi-Agent reinforcement learning has received lot of attention in recent years and have applications in many different areas. Existing methods involving Centralized Training and Decentralized execution, attempts to train the agents towards learning a pattern of coordinated actions to arrive at optimal joint policy. However if some agents are stochastic to varying degrees of stochasticity, the above methods often fail to converge and provides poor coordination among agents. In this paper we show how this stochasticity of agents, which could be a result of malfunction or aging of robots, can add to the uncertainty in coordination and there contribute to unsatisfactory global coordination. In this case, the deterministic agents have to understand the behavior and limitations of the stochastic agents while arriving at optimal joint policy. Our solution, DSDF which tunes the discounted factor for the agents according to uncertainty and use the values to update the utility networks of individual agents. DSDF also helps in imparting an extent of reliability in coordination thereby granting stochastic agents tasks which are immediate and of shorter trajectory with deterministic ones taking the tasks which involve longer planning. Such an method enables joint co-ordinations of agents some of which may be partially performing and thereby can reduce or delay the investment of agent/robot replacement in many circumstances. Results on benchmark environment for different scenarios shows the efficacy of the proposed approach when compared with existing approaches.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/15/2022

Disentangling Successor Features for Coordination in Multi-agent Reinforcement Learning

Multi-agent reinforcement learning (MARL) is a promising framework for s...
research
03/03/2021

Inference-Based Deterministic Messaging For Multi-Agent Communication

Communication is essential for coordination among humans and animals. Th...
research
04/10/2020

Implicit Multiagent Coordination at Unsignalized Intersections via Multimodal Inference Enabled by Topological Braids

We focus on navigation among rational, non-communicating agents at unsig...
research
05/31/2019

Attentional Policies for Cross-Context Multi-Agent Reinforcement Learning

Many potential applications of reinforcement learning in the real world ...
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
10/31/2020

FireCommander: An Interactive, Probabilistic Multi-agent Environment for Joint Perception-Action Tasks

The purpose of this tutorial is to help individuals use the FireCommande...
research
09/13/2018

Negative Update Intervals in Deep Multi-Agent Reinforcement Learning

In Multi-Agent Reinforcement Learning, independent cooperative learners ...

Please sign up or login with your details

Forgot password? Click here to reset