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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Multistep-Ahead Stock Price Forecasting Based on Secondary Decomposition Technique and Extreme Learning Machine Optimized by the Differential Evolution Algorithm
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Multistep-Ahead Stock Price Forecasting Based on Secondary Decomposition Technique and Extreme Learning Machine Optimized by the Differential Evolution Algorithm

机译:基于二级分解技术和差分演进算法优化的超级股票价格预测

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摘要

The prediction research of the stock market prices is of great significance. Based on the secondary decomposition techniques of variational mode decomposition (VMD) and ensemble empirical mode decomposition (EEMD), this paper constructs a new hybrid prediction model by combining with extreme learning machine (ELM) optimized by the differential evolution (DE) algorithm. The hybrid model applies VMD technology to the original stock index price sequence to obtain different modal components and the residual item, then applies EEMD technology to the residual item, and then superimposes the prediction results of the DE-ELM model for each modal component and the residual item to obtain the final prediction results. In order to verify the validity of the model, this paper constructs a series of benchmark models and, respectively, tests the samples of the S&P 500 index and the HS300 index by one-step, three-step, and five-step forward forecasting. The empirical results show that the hybrid model proposed in this paper achieves the best prediction performance in all prediction scenarios, which indicates that the modeling idea focusing on the residual term effectively improves the prediction performance of the model. In addition, the prediction effect of the model combined with the decomposition technology is superior to the single DE-ELM model, where the secondary decomposition technique has a significant decomposition advantage compared to the single decomposition technique.
机译:股票市场价格的预测研究具有重要意义。基于变分模式分解(VMD)和集合经验模式分解(EEMD)的二级分解技术,本文通过与差分演进(DE)算法优化的极端学习机(ELM)组合来构造新的混合预测模型。混合模型将VMD技术应用于原来的股票指数价格序列,以获得不同的模态分量和残差项目,然后将EEMD技术应用于残余项目,然后叠加每个模态分量的DE-ELM模型的预测结果。残余项目获得最终预测结果。为了验证模型的有效性,本文分别构建了一系列基准模型,并通过一步,三步和五步前进预测测试了标准普尔500指数和HS300指数的样本。经验结果表明,本文提出的混合模型在所有预测场景中实现了最佳的预测性能,这表明专注于残余项的建模思想有效地提高了模型的预测性能。另外,与分解技术相结合的模型的预测效果优于单个DE-ELM模型,其中二次分解技术与单个分解技术相比具有显着的分解优势。

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