Publication | Open Access
ACE: An Actor Ensemble Algorithm for Continuous Control with Tree Search
19
Citations
21
References
2019
Year
Artificial IntelligenceControl StrategyEngineeringMachine LearningContinuous ControlAutomationSystems EngineeringActor Ensemble AlgorithmComputer ScienceIntelligent SystemsRobot LearningTree SearchLearning ControlRoboticsSequential Decision MakingMulti-agent LearningMulti-agent Planning
In this paper, we propose an actor ensemble algorithm, named ACE, for continuous control with a deterministic policy in reinforcement learning. In ACE, we use actor ensemble (i.e., multiple actors) to search the global maxima of the critic. Besides the ensemble perspective, we also formulate ACE in the option framework by extending the option-critic architecture with deterministic intra-option policies, revealing a relationship between ensemble and options. Furthermore, we perform a look-ahead tree search with those actors and a learned value prediction model, resulting in a refined value estimation. We demonstrate a significant performance boost of ACE over DDPG and its variants in challenging physical robot simulators.
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