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A Hybrid Sofm-svr With A Filter-based Feature Selectionfor Stock Market Forecasting

机译:基于滤波器特征选择的混合Sofm-svr用于股市预测

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摘要

Stock market price index prediction is regarded as a challenging task of the financial time series prediction process. Support vector regression (SVR) has successfully solved prediction problems in many domains, including the stock market. This paper hybridizes SVR with the self-organizing feature map (SOFM) technique and a filter-based feature selection to reduce the cost of training time and to improve prediction accuracies. The hybrid system conducts the following processes: filter-based feature selection to choose important input attributes; SOFM algorithm to cluster the training samples; and SVR to predict the stock market price index. The proposed model was demonstrated using a real future dataset - Taiwan index futures (FITX) to predict the next day's price index. The experiment results show that the proposed SOFM-SVR is an improvement over the traditional single SVR in average prediction accuracy and training time.
机译:股市价格指数预测被认为是金融时间序列预测过程中的一项艰巨任务。支持向量回归(SVR)已成功解决了许多领域的预测问题,包括股票市场。本文将SVR与自组织特征图(SOFM)技术和基于过滤器的特征选择进行了混合,以减少训练时间并提高预测准确性。混合系统执行以下过程:基于过滤器的特征选择以选择重要的输入属性; SOFM算法对训练样本进行聚类;和SVR预测股市价格指数。使用真实的未来数据集-台湾指数期货(FITX)来预测第二天的价格指数,证明了所建议的模型。实验结果表明,提出的SOFM-SVR在平均预测精度和训练时间上是对传统单SVR的改进。

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