Misperceptions about extreme dependencies between different financial
assets have been an important ele- ment of the recent financial crisis. This paper
studies inhomogeneity in dependence structures using Markov switching regular vine
copulas. These account for asymmetric dependencies and tail dependencies in high
dimensional data. We develop methods for fast maximum likelihood as well as Bayesian
inference. Our algo- rithms are validated in simulations and applied to financial
data. We find that regime switches are present in the dependence structure of
various data sets and show that regime switching models could provide tools for the
accurate description of inhomogeneity during times of crisis.
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