Discussion Paper
Copula-Based Time Series With Filtered Nonstationarity
Economic and financial time series data can exhibit nonstationary and nonlinear patterns si- multaneously. This paper studies copula-based time series models that capture both patterns. We introduce a procedure where nonstationarity is removed via a filtration, and then the nonlinear temporal dependence in the filtered data is captured via a flexible Markov copula.