ECHO-GL: Earnings Calls-Driven Heterogeneous Graph Learning for Stock Movement Prediction

Authors

  • Mengpu Liu Zhejiang University
  • Mengying Zhu Zhejiang University
  • Xiuyuan Wang Zhejiang University
  • Guofang Ma Zhejiang Gongshang University
  • Jianwei Yin Zhejiang University
  • Xiaolin Zheng Zhejiang University

DOI:

https://doi.org/10.1609/aaai.v38i12.29305

Keywords:

ML: Applications, ML: Graph-based Machine Learning

Abstract

Stock movement prediction serves an important role in quantitative trading. Despite advances in existing models that enhance stock movement prediction by incorporating stock relations, these prediction models face two limitations, i.e., constructing either insufficient or static stock relations, which fail to effectively capture the complex dynamic stock relations because such complex dynamic stock relations are influenced by various factors in the ever-changing financial market. To tackle the above limitations, we propose a novel stock movement prediction model ECHO-GL based on stock relations derived from earnings calls. ECHO-GL not only constructs comprehensive stock relations by exploiting the rich semantic information in the earnings calls but also captures the movement signals between related stocks based on multimodal and heterogeneous graph learning. Moreover, ECHO-GL customizes learnable stock stochastic processes based on the post earnings announcement drift (PEAD) phenomenon to generate the temporal stock price trajectory, which can be easily plugged into any investment strategy with different time horizons to meet investment demands. Extensive experiments on two financial datasets demonstrate the effectiveness of ECHO-GL on stock price movement prediction tasks together with high prediction accuracy and trading profitability.

Published

2024-03-24

How to Cite

Liu, M., Zhu, M., Wang, X., Ma, G., Yin, J., & Zheng, X. (2024). ECHO-GL: Earnings Calls-Driven Heterogeneous Graph Learning for Stock Movement Prediction. Proceedings of the AAAI Conference on Artificial Intelligence, 38(12), 13972-13980. https://doi.org/10.1609/aaai.v38i12.29305

Issue

Section

AAAI Technical Track on Machine Learning III