Momentum portfolio selection based on learning-to-rank algorithms with heterogeneous knowledge graphs

Mei Chen Wu, Szu Hao Huang*, An-Pin Chen

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Artificial intelligence techniques for financial time series analysis have been used to enhance momentum trading methods. However, most previous studies, which have treated stocks as independent entities, have overlooked the significance of correlations among individual stocks, thus compromising portfolio performance. To address this gap, a momentum trading framework is proposed that combines heterogeneous data, such as corporate governance factors and financial domain knowledge, to model the relationships between stocks. Our approach involves adopting a knowledge graph embedding approach to map relations among heterogeneous relationships in the data, which is then utilized to train a multitask supervised learning approach based on a learning-to-rank algorithm. This method culminates in a robust portfolio selection method on the basis of the framework. Experimental results using data from the Taiwan Stock Exchange demonstrate that our proposed method outperforms traditional linear models and other machine learning methods in predictive ability. The investment portfolio constructed serves as an invaluable aid to investment decision-making.

Original languageEnglish
Pages (from-to)4189-4209
Number of pages21
JournalApplied Intelligence
Volume54
Issue number5
DOIs
StatePublished - Mar 2024

Keywords

  • Artificial intelligence in finance
  • Financial time series analysis
  • Heterogeneous knowledge graph
  • Learning-to-rank algorithms
  • Momentum trading strategy
  • Portfolio selection

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