Stock Prediction via a Dual Relation Fusion Network incorporating Static and Dynamic Relations
Chen, Long, Bai, Huixin, Wang, Mingxin, Huang, Xiaohua, Liu, Ying, Zhao, Jie, Guan, Ziyu
–arXiv.org Artificial Intelligence
Accurate modeling of inter-stock relationships is critical for stock price forecasting. However, existing methods predominantly focus on single-state relationships, neglecting the essential complementarity between dynamic and static inter-stock relations. To solve this problem, we propose a Dual Relation Fusion Network (DRFN) to capture the long-term relative stability of stock relation structures while retaining the flexibility to respond to sudden market shifts. Our approach features a novel relative static relation component that models time-varying long-term patterns and incorporates overnight informational influences. We capture dynamic inter-stock relationships through distance-aware mechanisms, while evolving long-term structures via recurrent fusion of dynamic relations from the prior day with the pre-defined static relations. Experiments demonstrate that our method significantly outperforms the baselines across different markets, with high sensitivity to the co-movement of relational strength and stock price.
arXiv.org Artificial Intelligence
Oct-14-2025
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