Online Markov decision processes with Kullback-Leibler control cost

Peng Guan, M. Raginsky, R. Willett
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引用次数: 13

Abstract

We consider an online (real-time) control problem that involves an agent performing a discrete-time random walk over a finite state space. The agent's action at each time step is to specify the probability distribution for the next state given the current state. Following the set-up of Todorov (2007, 2009), the state-action cost at each time step is a sum of a nonnegative state cost and a control cost given by the Kullback-Leibler divergence between the agent's next-state distribution and that determined by some fixed passive dynamics. The online aspect of the problem is due to the fact that the state cost functions are generated by a dynamic environment, and the agent learns the current state cost only after having selected the corresponding action. We give an explicit construction of an efficient strategy that has small regret (i.e., the difference between the total state-action cost incurred causally and the smallest cost attainable using noncausal knowledge of the state costs) under mild regularity conditions on the passive dynamics. We demonstrate the performance of our proposed strategy on a simulated target tracking problem.
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具有Kullback-Leibler控制成本的在线马尔可夫决策过程
我们考虑一个在线(实时)控制问题,该问题涉及一个代理在有限状态空间上执行离散时间随机行走。agent在每个时间步的动作是给定当前状态指定下一个状态的概率分布。根据Todorov(2007, 2009)的建立,每个时间步的状态-行动成本是由agent下一状态分布与某些固定被动动态决定的Kullback-Leibler散度给出的非负状态成本和控制成本之和。问题的在线方面是由于状态代价函数是由动态环境生成的,并且代理只有在选择了相应的动作之后才学习当前状态代价。在被动动力学的温和规则条件下,我们给出了一个具有小遗憾的有效策略的明确构造(即,在状态成本的非因果知识下产生的总状态-行动成本与可获得的最小成本之间的差异)。我们在一个模拟目标跟踪问题上验证了所提策略的性能。
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