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A multiple-kernel support vector regression approach for stock market price forecasting

机译:股市价格预测的多核支持向量回归方法

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Support vector regression has been applied to stock market forecasting problems. However, it is usually needed to tune manually the hyperparameters of the kernel functions. Multiple-kernel learning was developed to deal with this problem, by which the kernel matrix weights and Lagrange multipliers can be simultaneously derived through semidefinite programming. However, the amount of time and space required is very demanding. We develop a two-stage multiple-kernel learning algorithm by incorporating sequential minimal optimization and the gradient projection method. By this algorithm, advantages from different hyperparameter settings can be combined and overall system performance can be improved. Besides, the user need not specify the hyperparameter settings in advance, and trial-and-error for determining appropriate hyperparameter settings can then be avoided. Experimental results, obtained by running on datasets taken from Taiwan Capitalization Weighted Stock Index, show that our method performs better than other methods.
机译:支持向量回归已应用于股票市场预测问题。但是,通常需要手动调整内核函数的超参数。为了解决这个问题,开发了多核学习,通过半定编程可以同时导出核矩阵权重和拉格朗日乘数。但是,所需的时间和空间要求很高。通过结合顺序最小优化和梯度投影方法,我们开发了一个两阶段的多核学习算法。通过此算法,可以组合来自不同超参数设置的优点,并可以提高整体系统性能。此外,用户不需要预先指定超参数设置,从而可以避免用于确定适当的超参数设置的反复试验。通过对来自台湾资本加权股票指数的数据集进行运行而获得的实验结果表明,我们的方法比其他方法表现更好。

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