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Contrastive Initial State Buffer for Reinforcement Learning

Nico Messikommer, Yunlong Song, Davide Scaramuzza

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Abstract

In Reinforcement Learning, the trade-off between exploration and exploitation poses a complex challenge for achieving efficient learning from limited samples. While recent works have been effective in leveraging past experiences for policy updates, they often overlook the potential of reusing past experiences for data collection. Independent of the underlying RL algorithm, we introduce the concept of a Contrastive Initial State Buffer, which strategically selects states from past experi- ences and uses them to initialize the agent in the environment in order to guide it toward more informative states. We validate our approach on two complex robotic tasks without relying on any prior information about the environment: (i) locomotion of a quadruped robot traversing challenging terrains and (ii) a quadcopter drone racing through a track. The experimental results show that our initial state buffer achieves higher task performance than the nominal baseline while also speeding up training convergence. Multimedia Material A video is available at https: //youtu.be/RB7mDq2fhho and code at https:// github.com/uzh-rpg/cl_initial_buffer

Index terms

Reinforcement Learning Deep Learning Methods