Opponent learning awareness and modelling in multi-objective normal form games

Roxana Rădulescu, Timothy Verstraeten, Yijie Zhang, Patrick Mannion, Diederik M. Roijers, Ann Nowé

Research output: Contribution to a Journal (Peer & Non Peer)Articlepeer-review

10 Citations (Scopus)

Abstract

Many real-world multi-agent interactions consider multiple distinct criteria, i.e. the payoffs are multi-objective in nature. However, the same multi-objective payoff vector may lead to different utilities for each participant. Therefore, it is essential for an agent to learn about the behaviour of other agents in the system. In this work, we present the first study of the effects of such opponent modelling on multi-objective multi-agent interactions with nonlinear utilities. Specifically, we consider two-player multi-objective normal form games with nonlinear utility functions under the scalarised expected returns optimisation criterion. We contribute novel actor-critic and policy gradient formulations to allow reinforcement learning of mixed strategies in this setting, along with extensions that incorporate opponent policy reconstruction and learning with opponent learning awareness (i.e. learning while considering the impact of one’s policy when anticipating the opponent’s learning step). Empirical results in five different MONFGs demonstrate that opponent learning awareness and modelling can drastically alter the learning dynamics in this setting. When equilibria are present, opponent modelling can confer significant benefits on agents that implement it. When there are no Nash equilibria, opponent learning awareness and modelling allows agents to still converge to meaningful solutions that approximate equilibria.

Original languageEnglish
Pages (from-to)1759-1781
Number of pages23
JournalNeural Computing and Applications
Volume34
Issue number3
DOIs
Publication statusPublished - Feb 2022

Keywords

  • Multi-agent systems
  • Multi-objective decision making
  • Nash equilibrium
  • Opponent modelling
  • Reinforcement learning

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