Feb. 8, 2024, 5:42 a.m. | Ruichu Cai Siyang Huang Jie Qiao Wei Chen Yan Zeng Keli Zhang Fuchun Sun Yang Yu Zhife

cs.LG updates on arXiv.org arxiv.org

As a key component to intuitive cognition and reasoning solutions in human intelligence, causal knowledge provides great potential for reinforcement learning (RL) agents' interpretability towards decision-making by helping reduce the searching space. However, there is still a considerable gap in discovering and incorporating causality into RL, which hinders the rapid development of causal RL. In this paper, we consider explicitly modeling the generation process of states with the causal graphical model, based on which we augment the policy. We formulate …

agents causality cognition cs.ai cs.lg decision framework gap human human intelligence intelligence interpretability key knowledge making policy reasoning reduce reinforcement reinforcement learning searching solutions space

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