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AAMAS 2023

Parameter Sharing with Network Pruning for Scalable Multi-Agent Deep Reinforcement Learning

Conference Paper Session 6A: Deep Learning Autonomous Agents and Multiagent Systems

Abstract

Handling the problem of scalability is one of the essential issues for multi-agent reinforcement learning (MARL) algorithms to be applied to real-world problems typically involving massively many agents. For this, parameter sharing across multiple agents has widely been used since it reduces the training time by decreasing the number of parameters and increasing the sample efficiency. However, using the same parameters across agents limits the representational capacity of the joint policy and consequently, the performance can be degraded in multi-agent tasks that require different behaviors for different agents. In this paper, we propose a simple method that adopts structured pruning for a deep neural network to increase the representational capacity of the joint policy without introducing additional parameters. We evaluate the proposed method on several benchmark tasks, and numerical results show that the proposed method significantly outperforms other parameter-sharing methods.

Authors

Keywords

  • Multi-agent Reinforcement Learning
  • Parameter Sharing
  • Scalability
  • Neural Network Pruning

Context

Venue
International Conference on Autonomous Agents and Multiagent Systems
Archive span
2002-2025
Indexed papers
7403
Paper id
98793529321308104