cs.AI updates on arXiv.org 10月28日 12:05
因果推理提升DQN问题解决能力
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本文提出将因果原理融入DQN,利用PEACE公式估计因果效应,提升DQN对环境因果结构的理解,增强其问题解决能力,实验结果表明效果优于传统DQN。

arXiv:2510.23424v1 Announce Type: new Abstract: Deep Q Networks (DQN) have shown remarkable success in various reinforcement learning tasks. However, their reliance on associative learning often leads to the acquisition of spurious correlations, hindering their problem-solving capabilities. In this paper, we introduce a novel approach to integrate causal principles into DQNs, leveraging the PEACE (Probabilistic Easy vAriational Causal Effect) formula for estimating causal effects. By incorporating causal reasoning during training, our proposed framework enhances the DQN's understanding of the underlying causal structure of the environment, thereby mitigating the influence of confounding factors and spurious correlations. We demonstrate that integrating DQNs with causal capabilities significantly enhances their problem-solving capabilities without compromising performance. Experimental results on standard benchmark environments showcase that our approach outperforms conventional DQNs, highlighting the effectiveness of causal reasoning in reinforcement learning. Overall, our work presents a promising avenue for advancing the capabilities of deep reinforcement learning agents through principled causal inference.

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因果推理 DQN 强化学习 问题解决 PEACE公式
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