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A novel time-series model based on empirical mode decomposition for forecasting TAIEX

机译:基于经验模态分解的TAIEX时间序列模型

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摘要

Stock price prediction is regarded as a challenging task of the financial time series prediction process. Time series models have successfully solved prediction problems in many domains, including the stock market. Unfortunately, there are two major drawbacks in stock market by time-series model: (1) some models cannot be applied to the datasets that do not follow the statistical assumptions; and (2) most time-series models which use stock data with many noises involutedly (caused by changes in market conditions and environments) would reduce the forecasting performance. For solving the above problems and promoting the forecasting performance of time-series models, this paper proposes a hybrid time-series support vector regression (SVR) model based on empirical mode decomposition (EMD) to forecast stock price for Taiwan stock exchange capitalization weighted stock index (TAIEX). In order to evaluate the forecasting performances, the proposed model is compared with autoregressive (AR) model and SVR model. The experimental results show that the proposed model is superior to the listing models in terms of root mean squared error (RMSE). And the more fluctuation year (2000-2001) occurs, the better accuracy of proposed model will be obtained.
机译:股票价格预测被认为是金融时间序列预测过程中的一项艰巨任务。时间序列模型已成功解决了许多领域的预测问题,包括股票市场。不幸的是,按时间序列模型,股票市场有两个主要缺点:(1)有些模型不能应用于不遵循统计假设的数据集; (2)大多数时间序列模型使用的股票数据会被渐渐地包含很多噪声(由市场条件和环境的变化所引起),这会降低预测效果。为了解决上述问题并提高时间序列模型的预测性能,本文提出了一种基于经验模式分解(EMD)的混合时间序列支持向量回归(SVR)模型来预测台湾证券交易所资本化加权股票的股价索引(TAIEX)。为了评估预测性能,将所提出的模型与自回归(AR)模型和SVR模型进行了比较。实验结果表明,所提出的模型在均方根误差(RMSE)方面优于列表模型。波动年份(2000-2001)越多,所提模型的精度越好。

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