Shi Zhiwei, Han Min
School of Electronic and Information Engineering, Dalian University of Technology, Liaoning 116023, China.
IEEE Trans Neural Netw. 2007 Mar;18(2):359-72. doi: 10.1109/TNN.2006.885113.
A novel chaotic time-series prediction method based on support vector machines (SVMs) and echo-state mechanisms is proposed. The basic idea is replacing "kernel trick" with "reservoir trick" in dealing with nonlinearity, that is, performing linear support vector regression (SVR) in the high-dimension "reservoir" state space, and the solution benefits from the advantages from structural risk minimization principle, and we call it support vector echo-state machines (SVESMs). SVESMs belong to a special kind of recurrent neural networks (RNNs) with convex objective function, and their solution is global, optimal, and unique. SVESMs are especially efficient in dealing with real life nonlinear time series, and its generalization ability and robustness are obtained by regularization operator and robust loss function. The method is tested on the benchmark prediction problem of Mackey-Glass time series and applied to some real life time series such as monthly sunspots time series and runoff time series of the Yellow River, and the prediction results are promising.
提出了一种基于支持向量机(SVM)和回声状态机制的新型混沌时间序列预测方法。其基本思想是在处理非线性时用“储备池技巧”取代“核技巧”,即在高维“储备池”状态空间中进行线性支持向量回归(SVR),该解决方案受益于结构风险最小化原则的优势,我们将其称为支持向量回声状态机(SVESM)。SVESM属于具有凸目标函数的一类特殊递归神经网络(RNN),其解决方案是全局、最优且唯一的。SVESM在处理实际生活中的非线性时间序列方面特别有效,其泛化能力和鲁棒性通过正则化算子和鲁棒损失函数获得。该方法在Mackey-Glass时间序列的基准预测问题上进行了测试,并应用于一些实际生活时间序列,如月度太阳黑子时间序列和黄河径流时间序列,预测结果很有前景。