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Can Perturbations Help Reduce Investment Risks? Risk-aware Stock Recommendation via Split Variational Adversarial Training

Publication ,  Journal Article
Cheng, J; Huang, K; Zheng, Z
Published in: ACM Transactions on Information Systems
March 22, 2024

In the stock market, a successful investment requires a good balance between profits and risks. Based on the learning to rank paradigm, stock recommendation has been widely studied in quantitative finance to recommend stocks with higher return ratios for investors. Despite the efforts to make profits, many existing recommendation approaches still have some limitations in risk control, which may lead to intolerable paper losses in practical stock investing. To effectively reduce risks, we draw inspiration from adversarial learning and propose a novel Split Variational Adversarial Training (SVAT) method for risk-aware stock recommendation. Essentially, SVAT encourages the stock model to be sensitive to adversarial perturbations of risky stock examples and enhances the model's risk awareness by learning from perturbations. To generate representative adversarial examples as risk indicators, we devise a variational perturbation generator to model diverse risk factors. Particularly, the variational architecture enables our method to provide a rough risk quantification for investors, showing an additional advantage of interpretability. Experiments on several real-world stock market datasets demonstrate the superiority of our SVAT method. By lowering the volatility of the stock-recommendation model, SVAT effectively reduces investment risks and outperforms state-of-the-art baselines by more than 30% in terms of risk-adjusted profits. All the experimental data and source code are available at https://drive.google.com/drive/folders/14AdM7WENEvIp5x5bV3zV_i4Aev21C9g6?usp=sharing.

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Published In

ACM Transactions on Information Systems

DOI

EISSN

1558-2868

ISSN

1046-8188

Publication Date

March 22, 2024

Volume

42

Issue

4

Related Subject Headings

  • Information Systems
  • 4605 Data management and data science
  • 0807 Library and Information Studies
  • 0806 Information Systems
 

Citation

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Cheng, J., Huang, K., & Zheng, Z. (2024). Can Perturbations Help Reduce Investment Risks? Risk-aware Stock Recommendation via Split Variational Adversarial Training. ACM Transactions on Information Systems, 42(4). https://doi.org/10.1145/3643131
Cheng, J., K. Huang, and Z. Zheng. “Can Perturbations Help Reduce Investment Risks? Risk-aware Stock Recommendation via Split Variational Adversarial Training.” ACM Transactions on Information Systems 42, no. 4 (March 22, 2024). https://doi.org/10.1145/3643131.
Cheng J, Huang K, Zheng Z. Can Perturbations Help Reduce Investment Risks? Risk-aware Stock Recommendation via Split Variational Adversarial Training. ACM Transactions on Information Systems. 2024 Mar 22;42(4).
Cheng, J., et al. “Can Perturbations Help Reduce Investment Risks? Risk-aware Stock Recommendation via Split Variational Adversarial Training.” ACM Transactions on Information Systems, vol. 42, no. 4, Mar. 2024. Scopus, doi:10.1145/3643131.
Cheng J, Huang K, Zheng Z. Can Perturbations Help Reduce Investment Risks? Risk-aware Stock Recommendation via Split Variational Adversarial Training. ACM Transactions on Information Systems. 2024 Mar 22;42(4).

Published In

ACM Transactions on Information Systems

DOI

EISSN

1558-2868

ISSN

1046-8188

Publication Date

March 22, 2024

Volume

42

Issue

4

Related Subject Headings

  • Information Systems
  • 4605 Data management and data science
  • 0807 Library and Information Studies
  • 0806 Information Systems