Building models for high dimensional portfolios is important in risk management and asset allocation. Here we propose a novel and fast way of estimating models of time-varying covariances that overcome an undiagnosed incidental parameter problem which has troubled existing methods when applied to hundreds or even thousands of assets. Indeed we can handle the case where the cross-sectional dimension is larger than the time series one. The theory of this new strategy is developed in some detail, allowing formal hypothesis testing to be carried out on these models. Simulations are used to explore the performance of this inference strategy while empirical examples are reported which show the strength of this method. The out of sample hedging pe...
High dimensional time series presents uniques challenges due to both the serial dependence and the l...
Estimation of covariate-dependent conditional covariance matrix in a high-dimensional space poses a ...
A new covariance matrix estimator is proposed under the assumption that at every time period all pai...
Building models for high dimensional portfolios is important in risk management and asset allocation...
Building models for high dimensional portfolios is important in risk management and asset allocation...
Building models for high dimensional portfolios is important in risk management and asset allocation...
Building models for high dimensional portfolios is important in risk management and asset allocation...
Economic modeling in a data-rich environment is often challenging. To allow for enough flexibility a...
Many parameterizations have been introduced to model covariance dynamics. Yet estimat-ing even moder...
Modelling and forecasting high dimensional covariance matrices is a key challenge in data-richenviro...
This paper injects factor structure into the estimation of time-varying, large-dimensional covarianc...
This paper develops time series methods for forecasting correlations in high dimensional problems. T...
Dynamic covariance estimation for multivariate time series suffers from the curse of dimensionality....
Modelling and forecasting the covariance of financial return series has always been a challenge due ...
ABSTRACT. This paper discusses a new dynamic model for dealing with large dimensional realized covar...
High dimensional time series presents uniques challenges due to both the serial dependence and the l...
Estimation of covariate-dependent conditional covariance matrix in a high-dimensional space poses a ...
A new covariance matrix estimator is proposed under the assumption that at every time period all pai...
Building models for high dimensional portfolios is important in risk management and asset allocation...
Building models for high dimensional portfolios is important in risk management and asset allocation...
Building models for high dimensional portfolios is important in risk management and asset allocation...
Building models for high dimensional portfolios is important in risk management and asset allocation...
Economic modeling in a data-rich environment is often challenging. To allow for enough flexibility a...
Many parameterizations have been introduced to model covariance dynamics. Yet estimat-ing even moder...
Modelling and forecasting high dimensional covariance matrices is a key challenge in data-richenviro...
This paper injects factor structure into the estimation of time-varying, large-dimensional covarianc...
This paper develops time series methods for forecasting correlations in high dimensional problems. T...
Dynamic covariance estimation for multivariate time series suffers from the curse of dimensionality....
Modelling and forecasting the covariance of financial return series has always been a challenge due ...
ABSTRACT. This paper discusses a new dynamic model for dealing with large dimensional realized covar...
High dimensional time series presents uniques challenges due to both the serial dependence and the l...
Estimation of covariate-dependent conditional covariance matrix in a high-dimensional space poses a ...
A new covariance matrix estimator is proposed under the assumption that at every time period all pai...