Dang Yinglong, Gao Xiaoguang, Wang Zidong
School of Electronic and Information, Northwestern Polytechnical University, Xi'an 710129, China.
Entropy (Basel). 2025 Jan 6;27(1):38. doi: 10.3390/e27010038.
Artificial intelligence plays an indispensable role in improving productivity and promoting social development, and causal discovery is one of the extremely important research directions in this field. Acyclic directed graphs (DAGs) are the most commonly used tool in causal modeling because of their excellent interpretability and structural properties. However, in the face of insufficient data, the accuracy and efficiency of DAGs learning are greatly reduced, resulting in a false perception of causality. As intuitive expert knowledge, structural constraints control DAG learning by limiting the causal relationship between variables, which is expected to solve the above-mentioned problem. However, it is often impossible to build a DAG by relying on expert knowledge alone. To solve this problem, we propose the use of expert knowledge as a hard constraint and the structural prior gained via data learning as a soft constraint. In this paper, we propose a fitness-rate-rank-based multiarmed bandit (FRRMAB) hyper-heuristic that integrates soft and hard constraints into the DAG learning process. For a linear structural equation model (SEM), soft constraints are obtained via partial correlation analysis. The experimental results on different networks show that the proposed method has higher scalability and accuracy.
人工智能在提高生产力和促进社会发展方面发挥着不可或缺的作用,因果发现是该领域极为重要的研究方向之一。无环有向图(DAG)因其出色的可解释性和结构特性,是因果建模中最常用的工具。然而,面对数据不足时,DAG学习的准确性和效率会大幅降低,从而导致对因果关系的错误认知。作为直观的专家知识,结构约束通过限制变量之间的因果关系来控制DAG学习,有望解决上述问题。然而,仅依靠专家知识往往无法构建DAG。为解决此问题,我们建议将专家知识用作硬约束,并将通过数据学习获得的结构先验用作软约束。在本文中,我们提出了一种基于适应率排名的多臂赌博机(FRRMAB)超启发式算法,该算法将软约束和硬约束集成到DAG学习过程中。对于线性结构方程模型(SEM),通过偏相关分析获得软约束。在不同网络上的实验结果表明,所提出的方法具有更高的可扩展性和准确性。