Template-type: ReDif-Paper 1.0 Author-Name: Hafner Christian M. Author-Name: Manner Hans Author-workplace-name: METEOR Title: Dynamic stochastic copula models: Estimation, inference and applications Abstract: We propose a new dynamic copula model where the parameter characterizing dependence follows an autoregressive process. As this model class includes the Gaussian copula with stochastic correlation process, it can be viewed as a generalization of multivariate stochastic volatility models. Despite the complexity of the model, the decoupling of marginals and dependence parameters facilitates estimation. We propose estimation in two steps, where first the parameters of the marginal distributions are estimated, and then those of the copula. Parameters of the latent processes (volatilities and dependence) are estimated using efficient importance sampling (EIS). We discuss goodness-of-fit tests and ways to forecast the dependence parameter. For two bivariate stock index series, we show that theproposed model outperforms standard competing models. Keywords: econometrics; Series: Research Memoranda Creation-Date: 2008 Number: 043 File-URL: http://digitalarchive.maastrichtuniversity.nl/fedora/objects/guid:7a63dbb6-2bfd-4cd0-9667-e4321f3d8ed7/datastreams/ASSET1/content File-Format: application/pdf File-Size: 610958 Handle: RePEc:unm:umamet:2008043