This paper injects factor structure into the estimation of time-varying, large-dimensional covariance matrices of stock returns. Existing factor models struggle to model the covariance matrix of residuals in the presence of time-varying conditional heteroskedasticity in large universes. Conversely, rotation-equivariant estimators of large-dimensional time-varying covariance matrices forsake directional information embedded in market-wide risk factors. We introduce a new covariance matrix estimator that blends factor structure with time-varying conditional heteroskedasticity of residuals in large dimensions up to 1000 stocks. It displays superior all-around performance on historical data against a variety of state-of-the-art competitors, inc...
Estimating covariance matrices is an important part of portfolio selection, risk management, and ass...
The objective of this paper is to examine effects of realized covariance matrix estimators based on ...
Dynamic covariance estimation for multivariate time series suffers from the curse of dimensionality....
This paper injects factor structure into the estimation of time-varying, large-dimensional covarianc...
Modelling and forecasting high dimensional covariance matrices is a key challenge in data-richenviro...
Thesis (Ph.D.)--University of Washington, 2013Estimating the volatilities and correlations of asset ...
Second moments of asset returns are important for risk management and portfolio selection. The probl...
We study equity premium out-of-sample predictability by extracting the information contained in a hi...
Published in Economics Letters, 2020, 195, 109465. DOI: 10.1016/j.econlet.2020.109465</p
This paper proposes to estimate the covariance matrix of stock returns by an optimally weighted aver...
We study equity premium out-of-sample predictability by extracting the information contained in a hi...
This paper proposes to estimate the covariance matrix of stock returns by an optimally weighted aver...
Two crucial aspects to the problem of portfolio selection are the specification of the model for exp...
Many econometric and data-science applications require a reliable estimate of the covariance matrix,...
Markowitz (1952) portfolio selection requires an estimator of the covariance matrix of returns. To a...
Estimating covariance matrices is an important part of portfolio selection, risk management, and ass...
The objective of this paper is to examine effects of realized covariance matrix estimators based on ...
Dynamic covariance estimation for multivariate time series suffers from the curse of dimensionality....
This paper injects factor structure into the estimation of time-varying, large-dimensional covarianc...
Modelling and forecasting high dimensional covariance matrices is a key challenge in data-richenviro...
Thesis (Ph.D.)--University of Washington, 2013Estimating the volatilities and correlations of asset ...
Second moments of asset returns are important for risk management and portfolio selection. The probl...
We study equity premium out-of-sample predictability by extracting the information contained in a hi...
Published in Economics Letters, 2020, 195, 109465. DOI: 10.1016/j.econlet.2020.109465</p
This paper proposes to estimate the covariance matrix of stock returns by an optimally weighted aver...
We study equity premium out-of-sample predictability by extracting the information contained in a hi...
This paper proposes to estimate the covariance matrix of stock returns by an optimally weighted aver...
Two crucial aspects to the problem of portfolio selection are the specification of the model for exp...
Many econometric and data-science applications require a reliable estimate of the covariance matrix,...
Markowitz (1952) portfolio selection requires an estimator of the covariance matrix of returns. To a...
Estimating covariance matrices is an important part of portfolio selection, risk management, and ass...
The objective of this paper is to examine effects of realized covariance matrix estimators based on ...
Dynamic covariance estimation for multivariate time series suffers from the curse of dimensionality....