Improved Stock Market Prediction by Combining Support Vector Machine and Empirical Mode Decomposition

Honghai Yu, Haifei Liu
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引用次数: 22

Abstract

Now equity returns are predictable has been called """"new fact in finance"""". in this paper, a two-stage neural network architecture constructed by combining Support Vector Machine (SVM) and Empirical Mode Decomposition (EMD) is proposed for stock market prediction. in the first stage, EMD is used to partition the whole input space into several disjoint regions. in the second stage, multiple SVMs that best fit each partitioned region are constructed by finding the most appropriate kernel function and the optimal learning parameters of SVMs, and finally through the combination of different region predictions to get the forecasting of the financial time series. We use China Stock Market Index (Shanghai Composite Index) in the experiment and find out that the proposed method achieves significantly higher prediction performance in comparison with a single SVM model.
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基于支持向量机和经验模态分解的股票市场预测方法
现在股票收益可预测被称为""""金融新事实""""。本文提出了一种结合支持向量机(SVM)和经验模态分解(EMD)的两阶段神经网络结构,用于股票市场预测。在第一阶段,使用EMD将整个输入空间划分为几个不相交的区域。第二阶段,通过寻找最合适的核函数和支持向量机的最优学习参数,构建最适合每个划分区域的多个支持向量机,最后通过不同区域预测的组合得到对金融时间序列的预测。我们使用中国股票市场指数(上证综合指数)进行实验,发现所提出的方法与单一SVM模型相比具有明显更高的预测性能。
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