English

A General Framework for Interacting Bayes-Optimally with Self-Interested Agents using Arbitrary Parametric Model and Model Prior

Machine Learning 2014-03-18 v3 Artificial Intelligence Multiagent Systems Machine Learning

Abstract

Recent advances in Bayesian reinforcement learning (BRL) have shown that Bayes-optimality is theoretically achievable by modeling the environment's latent dynamics using Flat-Dirichlet-Multinomial (FDM) prior. In self-interested multi-agent environments, the transition dynamics are mainly controlled by the other agent's stochastic behavior for which FDM's independence and modeling assumptions do not hold. As a result, FDM does not allow the other agent's behavior to be generalized across different states nor specified using prior domain knowledge. To overcome these practical limitations of FDM, we propose a generalization of BRL to integrate the general class of parametric models and model priors, thus allowing practitioners' domain knowledge to be exploited to produce a fine-grained and compact representation of the other agent's behavior. Empirical evaluation shows that our approach outperforms existing multi-agent reinforcement learning algorithms.

Keywords

Cite

@article{arxiv.1304.2024,
  title  = {A General Framework for Interacting Bayes-Optimally with Self-Interested Agents using Arbitrary Parametric Model and Model Prior},
  author = {Trong Nghia Hoang and Kian Hsiang Low},
  journal= {arXiv preprint arXiv:1304.2024},
  year   = {2014}
}

Comments

23rd International Joint Conference on Artificial Intelligence (IJCAI 2013), Extended version with proofs, 10 pages

R2 v1 2026-06-21T23:55:13.272Z