High-dimensional time series prediction using kernel-based Koopman mode regression

被引:0
作者
Jia-Chen Hua
Farzad Noorian
Duncan Moss
Philip H. W. Leong
Gemunu H. Gunaratne
机构
[1] University of Sydney,School of Electrical and Information Engineering
[2] University of Luxembourg,Luxembourg Centre for Systems Biomedicine
[3] University of Houston,Department of Physics
来源
Nonlinear Dynamics | 2017年 / 90卷
关键词
High-dimensional time series; Spatio-temporal dynamics; Complex systems; Data-driven Koopman operator; Dynamic mode decomposition; Kernel methods;
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中图分类号
学科分类号
摘要
We propose a novel methodology for high-dimensional time series prediction based on the kernel method extension of data-driven Koopman spectral analysis, via the following methodological advances: (a) a new numerical regularization method, (b) a natural ordering of Koopman modes which provides a fast alternative to the sparsity-promoting procedure, (c) a predictable Koopman modes selection technique which is equivalent to cross-validation in machine learning, (d) an optimization method for selected Koopman modes to improve prediction accuracy, (e) prediction model generation and selection based on historical error measures. The prediction accuracy of this methodology is excellent: for example, when it is used to predict clients’ order flow time series of foreign exchange, which is almost random, it can achieve more than 10% improvement on root-mean-square error over auto-regressive moving average. This methodology also opens up new possibilities for data-driven modeling and forecasting complex systems that generate the high-dimensional time series. We believe that this methodology will be of interest to the community of scientists and engineers working on quantitative finance, econometrics, system biology, neurosciences, meteorology, oceanography, system identification and control, data mining, machine learning, and many other fields involving high-dimensional time series and spatio-temporal data.
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页码:1785 / 1806
页数:21
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