posted on 2010-01-27, 15:59authored byGary Koop, Roberto Leon-Gonzalez, Rodney Strachan
This paper develops methods of Bayesian inference in a cointegrating panel data
model. This model involves each cross-sectional unit having a vector error correction representation.
It is flexible in the sense that different cross-sectional units can have different cointegration ranks and
cointegration spaces. Furthermore, the parameters which characterize short-run dynamics and deterministic
components are allowed to vary over cross-sectional units. In addition to a noninformative
prior, we introduce an informative prior which allows for information about the likely location of the
cointegration space and about the degree of similarity in coefficients in different cross-sectional units.
A collapsed Gibbs sampling algorithm is developed which allows for efficient posterior inference. Our
methods are illustrated using real and artificial data.