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A Separate-Predict-Superimpose Predicting Model for Stock

机译:股票的独立预测-叠加预测模型

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The purpose of this research is to propose a more precise predicting model, the Separate-Predict-Superimpose Model, for time series, especially for the stock price and the stock risk than the established predicting method. In this model, time series are separated into three parts, including trend ingredient, periodic ingredient and random ingredient. Then the different suitable predicting methods are applying to predict different ingredients to receive accurate outcome. Ultimately, the final predicting result is superimposed by the three ingredient predicting outcome. The wavelet analysis, combination predict method, exponent smoothness method, Fourier Transform, fitting analysis and Autoregressive Moving Average (ARMA) are adopted in this model. By applying the model to predict the Shanghai Composite Index, China National Petroleum Corporation stock price and risk and comparing with other predicting method, a conclusion can be made that this model can fit various characteristic time series and achieve a more precise result.
机译:这项研究的目的是针对时间序列,特别是针对股票价格和股票风险,提出一种比已建立的预测方法更为精确的预测模型,即“分离-预测-叠加”模型。在该模型中,时间序列分为三个部分,包括趋势成分,周期性成分和随机成分。然后,将采用不同的合适的预测方法来预测不同的成分,从而获得准确的结果。最终,最终的预测结果将与三种成分的预测结果相叠加。该模型采用小波分析,组合预测方法,指数平滑度方法,傅立叶变换,拟合分析和自回归移动平均(ARMA)。通过将该模型用于预测上证综合指数,中国石油天然气集团公司的股价和风险,并与其他预测方法进行比较,可以得出该模型可以拟合各种特征时间序列并得出更为精确的结果。

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