cs.AI updates on arXiv.org 10月10日 12:08
DODO算法:AI因果结构学习新进展
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本文提出DODO算法,通过重复干预自主学习环境因果结构,在复杂环境中提高AI性能,实验结果表明DODO在大多数资源条件下优于观察方法。

arXiv:2510.08207v1 Announce Type: new Abstract: Artificial Intelligence has achieved remarkable advancements in recent years, yet much of its progress relies on identifying increasingly complex correlations. Enabling causality awareness in AI has the potential to enhance its performance by enabling a deeper understanding of the underlying mechanisms of the environment. In this paper, we introduce DODO, an algorithm defining how an Agent can autonomously learn the causal structure of its environment through repeated interventions. We assume a scenario where an Agent interacts with a world governed by a causal Directed Acyclic Graph (DAG), which dictates the system's dynamics but remains hidden from the Agent. The Agent's task is to accurately infer the causal DAG, even in the presence of noise. To achieve this, the Agent performs interventions, leveraging causal inference techniques to analyze the statistical significance of observed changes. Results show better performance for DODO, compared to observational approaches, in all but the most limited resource conditions. DODO is often able to reconstruct with as low as zero errors the structure of the causal graph. In the most challenging configuration, DODO outperforms the best baseline by +0.25 F1 points.

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DODO算法 因果结构学习 AI性能提升 复杂环境 统计显著性
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