Cao L J, Tay F H
Dept. of Mech. Eng., Nat. Univ. of Singapore, Singapore.
IEEE Trans Neural Netw. 2003;14(6):1506-18. doi: 10.1109/TNN.2003.820556.
A novel type of learning machine called support vector machine (SVM) has been receiving increasing interest in areas ranging from its original application in pattern recognition to other applications such as regression estimation due to its remarkable generalization performance. This paper deals with the application of SVM in financial time series forecasting. The feasibility of applying SVM in financial forecasting is first examined by comparing it with the multilayer back-propagation (BP) neural network and the regularized radial basis function (RBF) neural network. The variability in performance of SVM with respect to the free parameters is investigated experimentally. Adaptive parameters are then proposed by incorporating the nonstationarity of financial time series into SVM. Five real futures contracts collated from the Chicago Mercantile Market are used as the data sets. The simulation shows that among the three methods, SVM outperforms the BP neural network in financial forecasting, and there are comparable generalization performance between SVM and the regularized RBF neural network. Furthermore, the free parameters of SVM have a great effect on the generalization performance. SVM with adaptive parameters can both achieve higher generalization performance and use fewer support vectors than the standard SVM in financial forecasting.
一种名为支持向量机(SVM)的新型学习机器,因其卓越的泛化性能,已在从最初的模式识别应用到回归估计等其他应用的广泛领域中受到越来越多的关注。本文探讨了支持向量机在金融时间序列预测中的应用。首先,通过将支持向量机与多层反向传播(BP)神经网络和正则化径向基函数(RBF)神经网络进行比较,检验了支持向量机在金融预测中应用的可行性。通过实验研究了支持向量机性能随自由参数的变化情况。然后,通过将金融时间序列的非平稳性纳入支持向量机,提出了自适应参数。从芝加哥商业市场整理的五份真实期货合约用作数据集。模拟结果表明,在这三种方法中,支持向量机在金融预测方面优于BP神经网络,并且支持向量机与正则化RBF神经网络具有相当的泛化性能。此外,支持向量机的自由参数对泛化性能有很大影响。在金融预测中,具有自适应参数的支持向量机既能实现更高的泛化性能,又比标准支持向量机使用更少的支持向量。