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Forecasting stock price using Nonlinear independent component analysis and support vector regression

机译:使用非线性独立成分分析和支持向量回归预测股价

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In developing a stock price forecasting model, the first step is usually feature extraction. Nonlinear independent component analysis (NLICA) is a novel feature extraction technique to find independent sources given only observed data that are mixtures of the unknown sources, without prior knowledge of the mixing mechanisms. It assumes that the observed mixtures are the nonlinear combination of latent source signals. This study propose a stock price forecasting model which first uses NLICA as preprocessing to extract features from forecasting variables. The features, called independent components (ICs), are served as the inputs of support vector regression (SVR) to build the prediction model. Experimental results on Nikkei 225 closing cash index show that the proposed method can produce the best prediction performance compared to the SVR models that use linear ICA, principal component analysis (PCA) and kernel PCA as feature extraction, and the single SVR model without feature extraction.
机译:在开发股票价格预测模型时,第一步通常是特征提取。非线性独立成分分析(NLICA​​)是一种新颖的特征提取技术,可在仅提供观察数据(未知来源的混合物)的情况下查找独立来源,而无需事先了解混合机理。假定观察到的混合是潜在源信号的非线性组合。本研究提出了一种股票价格预测模型,该模型首先使用NLICA​​作为预处理从预测变量中提取特征。这些称为独立组件(IC)的功能用作支持向量回归(SVR)的输入,以建立预测模型。在Nikkei 225收盘现金指数上的实验结果表明,与使用线性ICA,主成分分析(PCA)和内核PCA作为特征提取以及不使用特征提取的单个SVR模型的SVR模型相比,该方法可以产生最佳的预测性能。 。

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