Novelty seeking multiagent evolutionary reinforcement learning

Ayhan Alp Aydeniz, Robert Loftin, Kagan Tumer

Research output: Chapter in Book/Conference proceedings/Edited volumeConference contributionScientificpeer-review

2 Citations (Scopus)
45 Downloads (Pure)

Abstract

Coevolving teams of agents promises effective solutions for many coordination tasks such as search and rescue missions or deep ocean exploration. Good team performance in such domains generally relies on agents discovering complex joint policies, which is particularly difficult when the fitness functions are sparse (where many joint policies return the same or even zero fitness values). In this paper, we introduce Novelty Seeking Multiagent Evolutionary Reinforcement Learning (NS-MERL), which enables agents to more efficiently explore their joint strategy space. The key insight of NS-MERL is to promote good exploratory behaviors for individual agents using a dense, novelty-based fitness function. Though the overall team-level performance is still evaluated via a sparse fitness function, agents using NS-MERL more efficiently explore their joint action space and more readily discover good joint policies. Our results in complex coordination tasks show that teams of agents trained with NS-MERL perform significantly better than agents trained solely with task-specific fitnesses.

Original languageEnglish
Title of host publicationGECCO 2023 - Proceedings of the 2023 Genetic and Evolutionary Computation Conference
PublisherACM
Pages402-410
Number of pages9
ISBN (Electronic)9798400701191
DOIs
Publication statusPublished - 2023
Event2023 Genetic and Evolutionary Computation Conference, GECCO 2023 - Lisbon, Portugal
Duration: 15 Jul 202319 Jul 2023

Publication series

NameGECCO 2023 - Proceedings of the 2023 Genetic and Evolutionary Computation Conference

Conference

Conference2023 Genetic and Evolutionary Computation Conference, GECCO 2023
Country/TerritoryPortugal
CityLisbon
Period15/07/2319/07/23

Keywords

  • evolutionary RL
  • exploration
  • fitness shaping
  • multiagent learning

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