The Meta-Representation Hypothesis
Xie, Zhengpeng, Cao, Jiahang, Zhang, Qiang, Zhang, Jianxiong, Wang, Changwei, Xu, Renjing
–arXiv.org Artificial Intelligence
Humans rely on high-level meta-representations to engage in abstract reasoning. In complex cognitive tasks, these meta-representations help individuals abstract general rules from experience. However, constructing such meta-representations from high-dimensional observations remains a longstanding challenge for reinforcement learning agents. For instance, a well-trained agent often fails to generalize to even minor variations of the same task, such as changes in background color, while humans can easily handle. In this paper, we build a bridge between meta-representation and generalization, showing that generalization performance benefits from meta-representation learning. We also hypothesize that deep mutual learning (DML) among agents can help them converge to meta-representations. Empirical results provide support for our theory and hypothesis. Overall, this work provides a new perspective on the generalization of deep reinforcement learning.
arXiv.org Artificial Intelligence
Jan-5-2025
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