2023
DOI: 10.1609/aaai.v37i8.26156
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Simultaneously Updating All Persistence Values in Reinforcement Learning

Abstract: In Reinforcement Learning, the performance of learning agents is highly sensitive to the choice of time discretization. Agents acting at high frequencies have the best control opportunities, along with some drawbacks, such as possible inefficient exploration and vanishing of the action advantages. The repetition of the actions, i.e., action persistence, comes into help, as it allows the agent to visit wider regions of the state space and improve the estimation of the action effects. In this work, we derive a n… Show more

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