Copulas have proven to be very successful tools for the flexible modelling of cross-sectional
dependence. In this paper we express the dependence structure of continuous time series data
using a sequence of bivariate copulas. This corresponds to a type of decomposition recently
called a ‘vine’ in the graphical models literature, where each copula is entitled a ‘pair-copula’.
We propose a Bayesian approach for the estimation of this dependence structure for longitudinal
data. Bayesian selection ideas are used to identify any independence pair-copulas, with
the end result being a parsimonious representation of a time-inhomogeneous Markov process
of varying order. Estimates are Bayesian model averages over the distribution of the lag
structure of the Markov process. Overall, the pair-copula construction is very general and
the Bayesian approach generalises many previous methods for the analysis of longitudinal
data. Both the reliability of the proposed Bayesian methodology, and the advantages of the
pair-copula formulation, are demonstrated via simulation and two examples. The first is an
agricultural science example, while the second is an econometric model for the forecasting of
intraday electricity load. For both examples the Bayesian pair-copula model is substantially
more flexible than longitudinal models employed previously.
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Copulas have proven to be very successful tools for the flexible modelling of cross-sectional
dependence. In this paper we express the dependence structure of continuous time series data
using a sequence of bivariate copulas. This corresponds to a type of decomposition recently
called a ‘vine’ in the graphical models literature, where each copula is entitled a ‘pair-copula’.
We propose a Bayesian approach for the estimation of this dependence structure for longitudinal
data. Bayesian select...
»