Deep Co-Investment Network Learning for Financial Assets

Yue Wang, Chenwei Zhang, Shen Wang, Philip S. Yu, Lu Bai, Lixin Cui
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引用次数: 4

Abstract

Most recent works model the market structure of the stock market as a correlation network of the stocks. They apply pre-defined patterns to extract correlation information from the time series of stocks. Without considering the influences of the evolving market structure to the market index trends, these methods hardly obtain the market structure models which are compatible with the market principles. Advancements in deep learning have shown their incredible modeling capacity on various finance-related tasks. However, the learned inner parameters, which capture the essence of the finance time series, are not further exploited about their representation in the financial fields. In this work, we model the financial market structure as a deep co-investment network and propose a Deep Co-investment Network Learning (DeepCNL) method. DeepCNL automatically learns deep co-investment patterns between any pairwise stocks, where the rise-fall trends of the market index are used for distance supervision. The learned inner parameters of the trained DeepCNL, which encodes the temporal dynamics of deep co-investment patterns, are used to build the co-investment network between the stocks as the investment structure of the corresponding market. We verify the effectiveness of DeepCNL on the real-world stock data and compare it with the existing methods on several financial tasks. The experimental results show that DeepCNL not only has the ability to better reflect the stock market structure that is consistent with widely-acknowledged financial principles but also is more capable to approximate the investment activities which lead to the stock performance reported in the real news or research reports than other alternatives.
金融资产深度共同投资网络学习
最近的研究将股票市场的市场结构建模为股票的相关网络。它们应用预定义的模式从股票的时间序列中提取相关信息。这些方法在没有考虑市场结构变化对市场指数走势的影响的情况下,很难得到符合市场规律的市场结构模型。深度学习的进步已经在各种与金融相关的任务中显示出了令人难以置信的建模能力。然而,学习到的内部参数捕捉了金融时间序列的本质,没有进一步利用它们在金融领域的表征。在这项工作中,我们将金融市场结构建模为一个深度共同投资网络,并提出了一种深度共同投资网络学习(DeepCNL)方法。DeepCNL自动学习任何成对股票之间的深度共同投资模式,其中市场指数的涨跌趋势用于远程监督。训练后的DeepCNL学习到的内部参数编码深度共同投资模式的时间动态,用于构建股票之间的共同投资网络,作为相应市场的投资结构。我们验证了DeepCNL在真实股票数据上的有效性,并将其与现有的几种金融任务方法进行了比较。实验结果表明,DeepCNL不仅能够更好地反映符合公认的金融原理的股票市场结构,而且比其他替代方法更能近似真实新闻或研究报告中报道的导致股票表现的投资活动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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