Integrated covariance matrices arise in intra-day models of asset returns, which allow volatility to change across the trading day. When the number of assets is large, the natural estimator of such a matrix suffers from bias, contributed from extreme eigenvalues. We introduce a novel nonlinear shrinkage estimator for the integrated covariance matrix which shrinks the extreme eigenvalues of a realized covariance matrix back to an acceptable level, and enjoys a certain asymptotic efficiency when the number of assets is of the same order as the number of data points. Novel maximum exposure and actual risk bounds are derived when our estimator is used in constructing the minimum variance portfolio. Compared to other methods, our estimator perfo...
This paper introduces a new method for deriving covariance matrix estimators that are decision-theor...
Estimating covariance matrices is an important part of portfolio selection, risk management, and ass...
This paper proposes to estimate the covariance matrix of stock returns by an optimally weighted aver...
Integrated covariance matrices arise in intra-day models of asset returns, which allow volatility to...
The first part of my thesis deals with the factor modeling for high-dimensional time series based on...
Many statistical applications require an estimate of a covariance matrix and/or its inverse. When th...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
This paper constructs a new estimator for large covariance matrices by drawing a bridge between the ...
Many econometric and data-science applications require a reliable estimate of the covariance matrix,...
In high-frequency data analysis, the extreme eigenvalues of a realized covariance matrix are biased ...
Covariance regularization is important when the dimension p of a covariance matrix is close to or ev...
This paper establishes the first analytical formula for nonlinear shrinkage estimation of large-dime...
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...
Markowitz (1952) portfolio selection requires estimates of (i) the vector of expected returns and (i...
This paper introduces a new method for deriving covariance matrix estimators that are decision-theor...
Estimating covariance matrices is an important part of portfolio selection, risk management, and ass...
This paper proposes to estimate the covariance matrix of stock returns by an optimally weighted aver...
Integrated covariance matrices arise in intra-day models of asset returns, which allow volatility to...
The first part of my thesis deals with the factor modeling for high-dimensional time series based on...
Many statistical applications require an estimate of a covariance matrix and/or its inverse. When th...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
This paper constructs a new estimator for large covariance matrices by drawing a bridge between the ...
Many econometric and data-science applications require a reliable estimate of the covariance matrix,...
In high-frequency data analysis, the extreme eigenvalues of a realized covariance matrix are biased ...
Covariance regularization is important when the dimension p of a covariance matrix is close to or ev...
This paper establishes the first analytical formula for nonlinear shrinkage estimation of large-dime...
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...
Markowitz (1952) portfolio selection requires estimates of (i) the vector of expected returns and (i...
This paper introduces a new method for deriving covariance matrix estimators that are decision-theor...
Estimating covariance matrices is an important part of portfolio selection, risk management, and ass...
This paper proposes to estimate the covariance matrix of stock returns by an optimally weighted aver...