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Meta-Reinforcement Learning With Dynamic Adaptiveness Distillation

H. Hu, Gao Huang, Xiang Li, Shiji Song

2021IEEE Transactions on Neural Networks and Learning Systems14 citationsDOI

Abstract

Deep reinforcement learning is confronted with problems of sampling inefficiency and poor task migration capability. Meta-reinforcement learning (meta-RL) enables meta-learners to utilize the task-solving skills trained on similar tasks and quickly adapt to new tasks. However, meta-RL methods lack enough queries toward the relationship between task-agnostic exploitation of data and task-related knowledge introduced by latent context, limiting their effectiveness and generalization ability. In this article, we develop an algorithm for off-policy meta-RL that can provide the meta-learners with self-oriented cognition toward how they adapt to the family of tasks. In our approach, we perform dynamic task-adaptiveness distillation to describe how the meta-learners adjust the exploration strategy in the meta-training process. Our approach also enables the meta-learners to balance the influence of task-agnostic self-oriented adaption and task-related information through latent context reorganization. In our experiments, our method achieves 10%-20% higher asymptotic reward than probabilistic embeddings for actor-critic RL (PEARL).

Topics & Concepts

Reinforcement learningReinforcementDistillationComputer scienceArtificial intelligenceMachine learningPsychologySocial psychologyChemistryChromatographyReinforcement Learning in RoboticsAdaptive Dynamic Programming ControlData Stream Mining Techniques
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