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Combining Tree-Search, Generative Models, and Nash Bargaining Concepts in Game-Theoretic Reinforcement Learning

Authors :
Li, Zun
Lanctot, Marc
McKee, Kevin R.
Marris, Luke
Gemp, Ian
Hennes, Daniel
Muller, Paul
Larson, Kate
Bachrach, Yoram
Wellman, Michael P.
Publication Year :
2023

Abstract

Multiagent reinforcement learning (MARL) has benefited significantly from population-based and game-theoretic training regimes. One approach, Policy-Space Response Oracles (PSRO), employs standard reinforcement learning to compute response policies via approximate best responses and combines them via meta-strategy selection. We augment PSRO by adding a novel search procedure with generative sampling of world states, and introduce two new meta-strategy solvers based on the Nash bargaining solution. We evaluate PSRO's ability to compute approximate Nash equilibrium, and its performance in two negotiation games: Colored Trails, and Deal or No Deal. We conduct behavioral studies where human participants negotiate with our agents ($N = 346$). We find that search with generative modeling finds stronger policies during both training time and test time, enables online Bayesian co-player prediction, and can produce agents that achieve comparable social welfare negotiating with humans as humans trading among themselves.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2302.00797
Document Type :
Working Paper