为个人投资者推荐股票:采用多样化对比学习的时态图网络方法

Youngbin Lee, Yejin Kim, Yongjae Lee
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引用次数: 0

摘要

在复杂的金融市场中,推荐系统在帮助个人做出明智决策方面发挥着至关重要的作用。现有的研究主要集中在价格预测方面,但即使是最复杂的模型也无法准确预测股票价格。此外,许多研究表明,大多数个人投资者并不遵循既定的投资理论,因为他们有自己的偏好。因此,荐股的棘手之处在于,荐股既要带来良好的投资业绩,又不能忽视个人偏好。要开发有效的荐股系统,必须考虑三个关键方面:1)个人偏好;2)投资组合多样化;3)股票特征和个人偏好的时间性。为此,我们开发了投资组合时空图网络推荐器 PfoTGNRec,它可以处理时变的合作信号,并结合了多样化增强对比学习。因此,与包括前沿动态嵌入模型和现有股票推荐模型在内的各种基线相比,我们的模型表现出更优越的性能,即我们的模型在捕捉个体偏好方面保持竞争力的同时,还表现出良好的投资性能。源代码和数据可在https://anonymous.4open.science/r/IJCAI2024-12F4。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stock Recommendations for Individual Investors: A Temporal Graph Network Approach with Diversification-Enhancing Contrastive Learning
In complex financial markets, recommender systems can play a crucial role in empowering individuals to make informed decisions. Existing studies predominantly focus on price prediction, but even the most sophisticated models cannot accurately predict stock prices. Also, many studies show that most individual investors do not follow established investment theories because they have their own preferences. Hence, the tricky point in stock recommendation is that recommendations should give good investment performance but also should not ignore individual preferences. To develop effective stock recommender systems, it is essential to consider three key aspects: 1) individual preferences, 2) portfolio diversification, and 3) temporal aspect of both stock features and individual preferences. In response, we develop the portfolio temporal graph network recommender PfoTGNRec, which can handle time-varying collaborative signals and incorporates diversification-enhancing contrastive learning. As a result, our model demonstrated superior performance compared to various baselines, including cutting-edge dynamic embedding models and existing stock recommendation models, in a sense that our model exhibited good investment performance while maintaining competitive in capturing individual preferences. The source code and data are available at https://anonymous.4open.science/r/IJCAI2024-12F4.
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