基于加权支持向量机的股票拐点预测

P. Chang, Jheng-Long Wu
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引用次数: 1

摘要

本研究将股票拐点预测视为不平衡数据分类问题,提出了基于进化加权支持向量机(EW-SVM)的系统,该系统对市场的变化方向进行了更优的预测。然而,w-SVM模型的许多参数必须由用户事先确定。因此,将w-SVM与遗传算法相结合的EW-SVM系统用于股票拐点预测。在实验结果中,将EW-SVM系统用于股票拐点预测,并与SVM、DT、NB和k-NN模型等预测模型进行了比较。这些实验结果表明,我们的EW-SVM系统在所有不同的方法中具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The weighted Support Vector Machines for the stock turning point prediction
This research treats the stock turning point prediction as the imbalanced data classification problems and proposes the evolving weighted support vector machines (EW-SVM) system that leads to superior predictions upon the direction-of-change of the market. However, many parameters of the w-SVM model have to be decided by the user beforehand. Therefore, the EW-SVM system combining both w-SVM with GA is applied to forecast stock turning points. In the experimental results, the EW-SVM system is used to predict stock turning points and is compared to other prediction models including the SVM, DT, NB and k-NN models. These experimental results show that our EW-SVM system has the better performance among all the different approaches.
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