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A Model-Free Approach to Meta-Level Control of Anytime Algorithms

Justin Svegliato, Prakhar Sharma, Shlomo Zilberstein

发表年份
2020
引用次数
12

摘要

Anytime algorithms offer a trade-off between solution quality and computation time that has proven to be useful in autonomous systems for a wide range of real-time planning problems. In order to optimize this trade-off, an autonomous system has to solve a challenging meta-level control problem: it must decide when to interrupt the anytime algorithm and act on the current solution. Prevailing meta-level control techniques, however, make a number of unrealistic assumptions that reduce their effectiveness and usefulness in the real world. Eliminating these assumptions, we first introduce a model-free approach to meta-level control based on reinforcement learning and prove its optimality. We then offer a general meta-level control technique that can use different reinforcement learning methods. Finally, we show that our approach is effective across several common benchmark domains and a mobile robot domain.

关键词

Reinforcement learningComputer scienceBenchmark (surveying)Control (management)Domain (mathematical analysis)ComputationMetamodelingInterruptRobotMobile robot

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