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On Stochastic Optimal Control and Reinforcement Learning by Approximate Inference (Extended Abstract)

机译:基于近似推理的随机最优控制与强化学习(扩展摘要)

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摘要

We present a reformulation of the stochastic optimal control problem in terms of KL divergence minimisation,not only providing a unifying perspective of previous approaches in this area,but also demonstrating that the formalism leads to novel practical approaches to the control problem.Specifically,a natural relaxation of the dual formulation gives rise to exact iterative solutions to the finite and infinite horizon stochastic optimal control problem,while direct application of Bayesian inference methods yields instances of risk sensitive control.
机译:我们根据KL散度最小化提出了随机最优控制问题的重新表述,不仅为该领域以前的方法提供了统一的观点,而且证明了形式主义导致了控制问题的新颖实用方法。对偶公式的松弛导致对有限和无限水平随机最优控制问题的精确迭代解,而贝叶斯推理方法的直接应用产生了风险敏感控制的实例。

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