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Hybridizing nonlinear independent component analysis and support vector regression with particle swarm optimization for stock index forecasting

机译:结合非线性独立成分分析和支持向量回归与粒子群算法进行股指预测

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摘要

One of the major activities of financial firms and private investors is to predict future prices of stocks. However, stock index prediction is regarded as a challenging task of the prediction problem since the stock market is a complex, chaotic and nonlinear dynamic system. As stock markets are highly dynamic and exhibit wide variation, it may be more realistic and practical that assumed the stock index data are a nonlinear mixture data. In this study, a hybrid stock index prediction model by utilizing nonlinear independent component analysis (NLICA), support vector regression (SVR) and particle swarm optimization (PSO) is proposed. In the proposed model, first, the NLICA is used to deal with the nonlinearity property of the stock index data. The proposed model utilizes NLICA to extract features from the observed stock index data. The features which can be used to represent underlying/hidden information of the data are then served as the inputs of SVR to build the stock index prediction model. Finally, PSO is applied to optimize the parameters of the SVR prediction model since the parameters of SVR must be carefully selected in establishing an effective and efficient SVR model. In order to evaluate the performance of the proposed approach, the closing indexes of the Taiwan stock exchange capitalization weighted stock index, Shanghai stock exchange composite index and Bombay stock exchange index are used as illustrative examples. Experimental results showed that the proposed hybrid stock index prediction method significantly outperforms the other six comparison models. It is an efficient and effective alternative for stock index forecasting.
机译:金融公司和私人投资者的主要活动之一是预测股票的未来价格。但是,由于股票市场是一个复杂,混乱和非线性的动态系统,因此将股指预测视为预测问题的一项艰巨任务。由于股票市场是高度动态的并且表现出很大的变化,因此假设股票指数数据是非线性混合数据可能更为现实和实用。提出了一种利用非线性独立成分分析(NLICA​​),支持向量回归(SVR)和粒子群优化(PSO)的混合股票指数预测模型。在提出的模型中,首先,NLICA​​用于处理股指数据的非线性特性。所提出的模型利用NLICA​​从观察到的股票指数数据中提取特征。然后,可以将用来表示数据的基础/隐藏信息的功能用作SVR的输入,以建立股票指数预测模型。最后,由于在建立有效和高效的SVR模型时必须仔细选择SVR的参数,因此PSO可用于优化SVR预测模型的参数。为了评估该方法的性能,以台湾证券交易所资本化加权股票指数,上海证券交易所综合指数和孟买证券交易所指数的收盘指数为例。实验结果表明,提出的混合股票指数预测方法明显优于其他六个比较模型。它是股指预测的有效替代方法。

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