English

Dual Policy Iteration

Machine Learning 2019-04-09 v2 Machine Learning

Abstract

Recently, a novel class of Approximate Policy Iteration (API) algorithms have demonstrated impressive practical performance (e.g., ExIt from [2], AlphaGo-Zero from [27]). This new family of algorithms maintains, and alternately optimizes, two policies: a fast, reactive policy (e.g., a deep neural network) deployed at test time, and a slow, non-reactive policy (e.g., Tree Search), that can plan multiple steps ahead. The reactive policy is updated under supervision from the non-reactive policy, while the non-reactive policy is improved with guidance from the reactive policy. In this work we study this Dual Policy Iteration (DPI) strategy in an alternating optimization framework and provide a convergence analysis that extends existing API theory. We also develop a special instance of this framework which reduces the update of non-reactive policies to model-based optimal control using learned local models, and provides a theoretically sound way of unifying model-free and model-based RL approaches with unknown dynamics. We demonstrate the efficacy of our approach on various continuous control Markov Decision Processes.

Keywords

Cite

@article{arxiv.1805.10755,
  title  = {Dual Policy Iteration},
  author = {Wen Sun and Geoffrey J. Gordon and Byron Boots and J. Andrew Bagnell},
  journal= {arXiv preprint arXiv:1805.10755},
  year   = {2019}
}

Comments

NeurIPS 2018; Additional related works

R2 v1 2026-06-23T02:09:58.438Z