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Stock price prediction based on a complex interrelation network of economic factors

机译:基于复杂经济因素相互关系网络的股价预测

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摘要

Stock price prediction is a field that has been continuously interesting. Stock prices are influenced by many factors such as oil prices, exchange rates, money interest rates, stock price indexes in other countries, and economic situations. Although these factors affect the stock price independently, they have an influence on the stock price through a complex interrelation, i.e., a network structure between these factors. In the stock prediction, the conventional methods represent limitations in reflecting the interrelation and complexity in these factors. In this paper, a stock prediction method using a semi-supervised learning (SSL) algorithm is proposed to circumvent such limitations. The SSL algorithm is a method that can implement a network consisting of nodes of the factors and edges of similarities between them. Through the network structure, the SSL algorithm is able to reflect the reciprocal and cyclic influences among the factors to prediction. The proposed model is applied to the stock price prediction from January 2007 to August 2008, using the global economic index and the stock prices of 200 individual companies listed to the KOSPI200.
机译:股票价格预测一直是一个有趣的领域。股票价格受许多因素的影响,例如石油价格,汇率,货币利率,其他国家的股票价格指数以及经济状况。尽管这些因素独立地影响股价,但它们通过复杂的相互关系(即这些因素之间的网络结构)对股价产生影响。在库存预测中,常规方法在反映这些因素的相互关系和复杂性方面表现出局限性。本文提出了一种使用半监督学习(SSL)算法的库存预测方法来规避此类限制。 SSL算法是一种可以实现由因子的节点和它们之间的相似性边缘组成的网络的方法。通过网络结构,SSL算法能够反映预测因素之间的往复和周期性影响。使用全球经济指数和KOSPI200上市的200家公司的股票价格,将建议的模型应用于2007年1月至2008年8月的股票价格预测。

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