Stock Market Prediction Using Ensemble of Graph Theory, Machine Learning and Deep Learning Models

Pratik Patil, C. Wu, Katerina Potika, Marjan Orang
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引用次数: 24

Abstract

Efficient Market Hypothesis (EMH) is the cornerstone of the modern financial theory and it states that it is impossible to predict the price of any stock using any trend, fundamental or technical analysis. Stock trading is one of the most important activities in the world of finance. Stock price prediction has been an age-old problem and many researchers from academia and business have tried to solve it using many techniques ranging from basic statistics to machine learning using relevant information such as news sentiment and historical prices. Even though some studies claim to get prediction accuracy higher than a random guess, they consider nothing but a proper selection of stocks and time interval in the experiments. In this paper, a novel approach is proposed using graph theory. This approach leverages Spatio-temporal relationship information between different stocks by modeling the stock market as a complex network. This graph-based approach is used along with two techniques to create two hybrid models. Two different types of graphs are constructed, one from the correlation of the historical stock prices and the other is a causation-based graph constructed from the financial news mention of that stock over a period. The first hybrid model leverages deep learning convolutional neural networks and the second model leverages a traditional machine learning approach. These models are compared along with other statistical models and the advantages and disadvantages of graph-based models are discussed. Our experiments conclude that both graph-based approaches perform better than the traditional approaches since they leverage structural information while building the prediction model.
基于图论、机器学习和深度学习模型的股票市场预测
有效市场假说(EMH)是现代金融理论的基石,它指出不可能使用任何趋势,基本或技术分析来预测任何股票的价格。股票交易是金融界最重要的活动之一。股票价格预测一直是一个古老的问题,学术界和商界的许多研究人员都试图使用许多技术来解决这个问题,从基本统计到利用新闻情绪和历史价格等相关信息的机器学习。尽管一些研究声称预测的准确性比随机猜测要高,但他们只考虑了实验中正确的股票选择和时间间隔。本文提出了一种利用图论的新方法。该方法通过将股票市场建模为一个复杂的网络,利用不同股票之间的时空关系信息。这种基于图的方法与两种技术一起用于创建两个混合模型。构建了两种不同类型的图表,一种是从历史股票价格的相关性中构建的,另一种是从一段时间内提到该股票的金融新闻构建的基于因果关系的图表。第一个混合模型利用深度学习卷积神经网络,第二个模型利用传统的机器学习方法。将这些模型与其他统计模型进行了比较,并讨论了基于图的模型的优缺点。我们的实验得出结论,这两种基于图的方法都比传统方法表现得更好,因为它们在构建预测模型时利用了结构信息。
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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