Journal article
Copula modelling of dependence in multivariate time series
MS Smith
International Journal of Forecasting | Published : 2015
Abstract
Almost all existing nonlinear multivariate time series models remain linear, conditional on a point in time or latent regime. Here, an alternative is proposed, where nonlinear serial and cross-sectional dependence is captured by a copula model. The copula defines a multivariate time series on the unit cube. A drawable vine copula is employed, along with a factorization which allows the marginal and transitional densities of the time series to be expressed analytically. The factorization also provides for simple conditions under which the series is stationary and/or Markov, as well as being parsimonious. A parallel algorithm for computing the likelihood is proposed, along with a Bayesian appr..
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Awarded by Australian Research Council
Funding Acknowledgements
Michael Smith's work was supported by Australian Research Council Grant FT110100729. The author thanks Professor Shaun Vahey of Warwick University for helpful discussions on time series modeling in macroeconomics, Doctor Mohamad Khaled of the University of Queensland for helpful discussions on copulas, and two referees for helpful comments that improved the paper.