Feb. 14, 2024, 5:43 a.m. | Brahma S. Pavse Matthew Zurek Yudong Chen Qiaomin Xie Josiah P. Hanna

cs.LG updates on arXiv.org arxiv.org

In many reinforcement learning (RL) applications, we want policies that reach desired states and then keep the controlled system within an acceptable region around the desired states over an indefinite period of time. This latter objective is called stability and is especially important when the state space is unbounded, such that the states can be arbitrarily far from each other and the agent can drift far away from the desired states. For example, in stochastic queuing networks, where queues of …

applications cs.lg online reinforcement learning reinforcement reinforcement learning space spaces stability state

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