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Lee, Yongjae
Financial Engineering Lab.
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Mean Variance Efficient Collaborative Filtering for Stock Recommendations

Author(s)
Chung, MunkiLee, JunhyeongLee, YongjaeKim, Woo Chang
Issued Date
2025-11-14
DOI
10.1145/3768292.3770427
URI
https://scholarworks.unist.ac.kr/handle/201301/89413
Citation
6th ACM International Conference on AI in Finance, ICAIF 2025, pp.806 - 813
Abstract
The rise of FinTech has transformed financial services online, yet stock recommender systems have received limited attention. Personalized stock recommendations can significantly impact customer engagement and satisfaction within the industry. However, traditional investment recommendations focus on high-return stocks or highly diversified portfolios, often neglecting user preferences. The former would result in unsuccessful investment because accurately predicting stock prices is almost impossible, whereas the latter would not be accepted by investors because many investors, including both individuals and institutional portfolio managers, who typically hold focused portfolios based on their investment strategies and interests. Collaborative filtering (CF) also may not be directly applicable to stock recommendations, because it is inappropriate to just recommend stocks that users like. The key is to optimally blend user's preference with the portfolio theory. However, no existing model considers both aspects. We propose a simple yet effective model, called mean-variance efficient collaborative filtering (MVECF). Our model is designed to improve the Pareto optimality in a trade-off between the risk and return by systemically handling uncertainties in stock prices. Experiments on real-world data show our model can increase the mean-variance efficiency of recommended portfolios while sacrificing just a small amount of recommendation accuracy. Finally, we further show MVECF is easily applicable to the graph-based ranking model.
Publisher
Association for Computing Machinery, Inc

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