Boosting Deep Reinforcement Learning Agents with Generative Data Augmentation
Tasos Papagiannis,
Georgios Alexandridis,
Andreas Stafylopatis
Abstract:Data augmentation is a promising technique in improving exploration and convergence speed in deep reinforcement learning methodologies. In this work, we propose a data augmentation framework based on generative models for creating completely novel states and increasing diversity. For this purpose, a diffusion model is used to generate artificial states (learning the distribution of original, collected states), while an additional model is trained to predict the action executed between two consecutive states. T… Show more
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