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Generalization in Reinforcement Learning by Soft Data Augmentation

Nicklas Hansen, Xiaolong Wang

2021100 citationsDOI

Abstract

Extensive efforts have been made to improve the generalization ability of Reinforcement Learning (RL) methods via domain randomization and data augmentation. However, as more factors of variation are introduced during training, optimization becomes increasingly challenging, and empirically may result in lower sample efficiency and unstable training. Instead of learning policies directly from augmented data, we propose SOft Data Augmentation (SODA), a method that decouples augmentation from policy learning. Specifically, SODA imposes a soft constraint on the encoder that aims to maximize the mutual information between latent representations of augmented and non-augmented data, while the RL optimization process uses strictly non-augmented data. Empirical evaluations are performed on diverse tasks from DeepMind Control suite as well as a robotic manipulation task, and we find SODA to significantly advance sample efficiency, generalization, and stability in training over state-of-the-art vision-based RL methods.<sup>1</sup>

Topics & Concepts

Reinforcement learningGeneralizationComputer scienceArtificial intelligenceStability (learning theory)Task (project management)Machine learningConstraint (computer-aided design)Sample (material)EncoderDomain (mathematical analysis)MathematicsEngineeringMathematical analysisOperating systemChromatographyChemistrySystems engineeringGeometryDomain Adaptation and Few-Shot LearningReinforcement Learning in RoboticsAdvanced Neural Network Applications
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