We develop new multi-factor dynamic copula models with time-varying factor loadings and observation-driven dynamics. The new models are highly flexible, scalable to high dimensions, and ensure positivity of covariance and correlation matrices. A closed-form likelihood expression allows for straightforward parameter estimation and likelihood inference. We apply the new model to a large panel of 100 U.S. stocks over the period 2001–2014. The proposed multi-factor structure is much better than existing (single-factor) models at describing stock return dependence dynamics in high-dimensions. The new factor models also improve one-step-ahead copula density forecasts and global minimum variance portfolio performance. Finally, we investigate diffe...
© 2014 Elsevier B.V.This paper proposes a new class of dynamic copula models for daily asset returns...
In this dissertation we propose factor copula models where dependence is modeled via one or several ...
This paper proposes a dynamic framework for modeling and forecasting of realized covariance matrices...
We develop new multi-factor dynamic copula models with time-varying factor loadings and observation-...
We develop new multi-factor dynamic copula models with time-varying factor loadings and observation-...
Copulas have been applied to many research areas as multivariate probability distributions for non-l...
Copulas have been applied to many research areas as multivariate probability distributions for non-l...
Copulas have been applied to many research areas as multivariate probability distributions for non-l...
We develop a dynamic model for the intraday dependence between discrete stock price changes. The con...
We develop a dynamic model for the intraday dependence between discrete stock price changes. The con...
Copula densities are widely used to model the dependence structure of financial time series. However...
We propose a dynamic skewed copula to model multivariate dependence in asset returns in a flexible y...
Recently, several copula-based approaches have been proposed for modeling stationary multivariate ti...
This paper examines the time-varying dependence structure of commodity futures portfolios based on m...
We introduce a copula-based dynamic model for multivariate processes of (non-negative) high-frequenc...
© 2014 Elsevier B.V.This paper proposes a new class of dynamic copula models for daily asset returns...
In this dissertation we propose factor copula models where dependence is modeled via one or several ...
This paper proposes a dynamic framework for modeling and forecasting of realized covariance matrices...
We develop new multi-factor dynamic copula models with time-varying factor loadings and observation-...
We develop new multi-factor dynamic copula models with time-varying factor loadings and observation-...
Copulas have been applied to many research areas as multivariate probability distributions for non-l...
Copulas have been applied to many research areas as multivariate probability distributions for non-l...
Copulas have been applied to many research areas as multivariate probability distributions for non-l...
We develop a dynamic model for the intraday dependence between discrete stock price changes. The con...
We develop a dynamic model for the intraday dependence between discrete stock price changes. The con...
Copula densities are widely used to model the dependence structure of financial time series. However...
We propose a dynamic skewed copula to model multivariate dependence in asset returns in a flexible y...
Recently, several copula-based approaches have been proposed for modeling stationary multivariate ti...
This paper examines the time-varying dependence structure of commodity futures portfolios based on m...
We introduce a copula-based dynamic model for multivariate processes of (non-negative) high-frequenc...
© 2014 Elsevier B.V.This paper proposes a new class of dynamic copula models for daily asset returns...
In this dissertation we propose factor copula models where dependence is modeled via one or several ...
This paper proposes a dynamic framework for modeling and forecasting of realized covariance matrices...