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A Two-stage Architecture For Stock Price Forecasting By Integrating Self-organizing Map And Support Vector Regression

机译:集成自组织映射和支持向量回归的两阶段股价预测架构

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Stock price prediction has attracted much attention from both practitioners and researchers. However, most studies in this area ignored the non-stationary nature of stock price series. That is, stock price series do not exhibit identical statistical properties at each point of time. As a result, the relationships between stock price series and their predictors are quite dynamic. It is challenging for any single artificial technique to effectively address this problematic characteristics in stock price series. One potential solution is to hybridize different artificial techniques. Towards this end, this study employs a two-stage architecture for better stock price prediction. Specifically, the self-organizing map (SOM) is first used to decompose the whole input space into regions where data points with similar statistical distributions are grouped together, so as to contain and capture the non-stationary property of financial series. After decomposing heterogeneous data points into several homogenous regions, support vector regression (SVR) is applied to forecast financial indices. The proposed technique is empirically tested using stock price series from seven major financial markets. The results show that the performance of stock price prediction can be significantly enhanced by using the two-stage architecture in comparison with a single SVR model.
机译:股票价格预测已经引起了从业人员和研究人员的广泛关注。但是,该领域的大多数研究都忽略了股票价格序列的非平稳性质。也就是说,股票价格序列在每个时间点都没有显示出相同的统计属性。结果,股票价格序列与其预测变量之间的关系非常动态。对于任何单一的人工技术而言,有效解决股票价格序列中的这一问题特征都具有挑战性。一种潜在的解决方案是杂交不同的人工技术。为此,本研究采用两阶段架构来更好地预测股票价格。具体来说,首先使用自组织图(SOM)将整个输入空间分解为具有相似统计分布的数据点分组在一起的区域,以包含和捕获金融系列的非平稳性。将异构数据点分解为几个同质区域后,将支持向量回归(SVR)应用于预测财务指标。使用来自七个主要金融市场的股票价格序列,对提出的技术进行了经验测试。结果表明,与单一SVR模型相比,使用两阶段体系结构可以显着提高股票价格预测的性能。

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