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Incorporating feature selection method into support vector regression for stock index forecasting

机译:将特征选择方法纳入支持向量回归进行股指预测

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摘要

Stock index forecasting is one of the most difficult tasks that financial organizations, firms and private investors have to face. Support vector regression (SVR) has become a popular alternative in stock index forecasting tasks due to its generalization capability in obtaining a unique solution. However, the major limitation of SVR is that it cannot capture the relative importance of independent variables to the dependent variable when many potential independent variables are considered. This study incorporates feature selection method and SVR for building stock index forecasting model. The proposed model uses multivariate adaptive regression splines (MARS), an effective nonlinear and nonparametric regression methodology, to identify important forecasting variables. The obtained significant predictor variables are then served as the inputs for the SVR model. Experimental results reveal that the obtained important variables from MARS can improve the forecasting performance of the SVR models. Moreover, the MARS results provide useful information about the relationship between the selected predictor variables and stock index through the obtained basis functions, important predictor variables and the MARS prediction function. Hence, the proposed stock index forecasting model can generate good forecasting performance and exhibits the capability of identifying significant predictor variables, which provide valuable information for further investment decisions/strategies.
机译:股指预测是金融组织,公司和私人投资者必须面对的最困难的任务之一。支持向量回归(SVR)已成为股票指数预测任务中的一种流行替代方法,因为它具有获得唯一解决方案的泛化能力。但是,SVR的主要局限性在于,当考虑许多潜在的自变量时,SVR无法捕获自变量对因变量的相对重要性。该研究将特征选择方法和SVR结合起来,用于建立股票指数预测模型。所提出的模型使用多元自适应回归样条(MARS)(一种有效的非线性和非参数回归方法)来识别重要的预测变量。然后,将获得的重要预测变量用作SVR模型的输入。实验结果表明,从MARS获得的重要变量可以提高SVR模型的预测性能。而且,MARS结果通过获得的基函数,重要的预测变量和MARS预测函数,提供了有关所选预测变量与股票指数之间关系的有用信息。因此,所提出的股指预测模型可以产生良好的预测性能,并具有识别重要预测变量的能力,这为进一步的投资决策/策略提供了有价值的信息。

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