Publication | Closed Access
WD3: Taming the Estimation Bias in Deep Reinforcement Learning
26
Citations
16
References
2020
Year
Unknown Venue
Artificial IntelligenceOverestimation PhenomenonEngineeringMachine LearningData ScienceReward HackingDeep Reinforcement LearningValue Function ApproximationSequential Decision MakingComputer ScienceFunction ApproximationRobot LearningUnderestimation BiasDeep LearningEstimation BiasLearning ControlMulti-agent LearningExploration V Exploitation
The overestimation phenomenon caused by function approximation is a well-known issue in value-based reinforcement learning algorithms such as deep Q-networks and DDPG, which could lead to suboptimal policies. To address this issue, TD3 takes the minimum value between a pair of critics, which introduces underestimation bias. By unifying these two opposites, we propose a novel Weighted Delayed Deep Deterministic Policy Gradient algorithm, which can reduce the estimation error and further improve the performance by weighting a pair of critics. We compare the learning process of value function between DDPG, TD3, and our proposed algorithm, which verifies that our algorithm could indeed eliminate the estimation error of value function. We evaluate our algorithm in the OpenAI Gym continuous control tasks, outperforming the state-of-the-art algorithms on every environment tested.
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