Forecasting and Granger Modelling with Non-linear Dynamical Dependencies
Abstract
Traditional linear methods for forecasting multivariate time series are not able to satisfactorily model the non-linear dependencies that may exist in non-Gaussian series. We build on the theory of learning vector-valued functions in the reproducing kernel Hilbert space and develop a method for learning prediction functions that accommodate such non-linearities. The method not only learns the predictive function but also the matrix-valued kernel underlying the function search space directly from the data. Our approach is based on learning multiple matrix-valued kernels, each of those composed of a set of input kernels and a set of output kernels learned in the cone of positive semi-definite matrices. In addition to superior predictive performance in the presence of strong non-linearities, our method also recovers the hidden dynamic relationships between the series and thus is a new alternative to existing graphical Granger techniques.
Cite
@article{arxiv.1706.08811,
title = {Forecasting and Granger Modelling with Non-linear Dynamical Dependencies},
author = {Magda Gregorová and Alexandros Kalousis and Stéphane Marchand-Maillet},
journal= {arXiv preprint arXiv:1706.08811},
year = {2017}
}
Comments
Accepted for ECML-PKDD 2017