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AAMAS 2022

Speeding up Deep Reinforcement Learning through Influence-Augmented Local Simulators

Conference Paper Extended Abstracts Autonomous Agents and Multiagent Systems

Abstract

Learning effective policies for real-world problems is still an open challenge for the field of reinforcement learning (RL). The main limitation being the amount of data needed and the pace at which that data can be obtained. In this paper, we study how to build lightweight simulators of complicated systems that can run sufficiently fast for deep RL to be applicable. We focus on domains where agents interact with a reduced portion of a larger environment while still being affected by the global dynamics. Our method combines the use of local simulators with learned models that mimic the influence of the global system. The experiments reveal that incorporating this idea into the deep RL workflow can considerably accelerate the training process and presents several opportunities for the future.

Authors

Keywords

  • Simulation
  • Influence
  • Deep Reinforcement Learning.

Context

Venue
International Conference on Autonomous Agents and Multiagent Systems
Archive span
2002-2025
Indexed papers
7403
Paper id
963533000742946314