Temporal-relational hypergraph tri-attention networks for stock trend prediction

Chaoran Cui, Xiaojie Li, Chunyun Zhang, Weili Guan, Meng Wang

Research output: Contribution to journalArticleResearchpeer-review

19 Citations (Scopus)

Abstract

Predicting the future price trends of stocks is a challenging yet intriguing problem given its critical role to help investors make profitable decisions. In this paper, we present a collaborative temporal-relational modeling framework for end-to-end stock trend prediction. Different from existing studies relying on the pairwise correlations between stocks, we argue that stocks are naturally connected as a collective group, and introduce two heterogeneous hypergraphs to separately characterize the stock group-wise relationships of industry-belonging and fund-holding. A novel hypergraph tri-attention network (HGTAN) is proposed to augment the hypergraph convolutional networks with a hierarchical organization of intra-hyperedge, inter-hyperedge, and inter-hypergraph attention modules. In this manner, HGTAN adaptively determines the importance of nodes, hyperedges, and hypergraphs during the information propagation among stocks, so that the potential synergies between stock movements can be fully exploited. Experimental evaluation and investment simulation on real-world stock data demonstrate the effectiveness of our approach.

Original languageEnglish
Article number109759
Number of pages14
JournalPattern Recognition
Volume143
DOIs
Publication statusPublished - Nov 2023

Keywords

  • Attention mechanism
  • Hypergraph convolutional networks
  • Stock investment simulation
  • Stock trend prediction

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