Abstract

Count-based exploration algorithms have shown to be effective in dealing with various deep reinforcement learning tasks. However, existing count-based exploration algorithms cannot work well in high-dimensional state space due to the complexity of state representation. In this paper, we propose a novel count-based exploration method, which can explore high-dimensional continuous state space and combine with any reinforcement learning algorithms. Specifically, by introducing the embedding network to encode the state space and to merge the states with similar key characteristics, we can compress the high-dimensional state space. By utilizing the state binary code to count the occurrence number of states, we generate additional rewards which can encourage the agent to explore the environment. Extensive experimental results on several commonly used environments show that our proposed method outperforms other strong baselines significantly.

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