Motivated by the need of a positive-semidefinite estimator of multivariate realized covariance matrices, we model noisy and asynchronous ultra-high-frequency asset prices in a state-space framework with missing data. We then estimate the covariance matrix of the latent states through a Kalman smoother and Expectation Maximization (KEM) algorithm. Iterating between the two EM steps, we obtain a covariance matrix estimate which is robust to both asynchronicity and microstructure noise, and positive-semidefinite by construction. We show the performance of the KEM estimator using extensive Monte Carlo simulations that mimic the liquidity and market microstructure characteristics of the S&P 500 universe as well as in an high-dimensional appl...
This paper proposes a new dynamic model of realized covariance (RCOV) matrices based on recent work ...
The paper develops a novel realized matrix-exponential stochastic volatility model of multivariate ...
This article proposes a consistent and efficient estimator of the high-frequency covariance (quadrat...
Summary: Motivated by the need for a positive-semidefinite estimator of multivariate realized covari...
Motivated by the need for a positive-semidefinite estimator of multivariate realized covariance matr...
Summary: Motivated by the need for a positive-semidefinite estimator of multivariate realized covari...
A multivariate positive definite estimator of the integrated covariance matrix of noisy and asynchro...
A multivariate positive definite estimator of the integrated covariance matrix of noisy and asynchro...
This paper studies the estimation problem of the covariance matrices of asset returns in the presenc...
We introduce a regularization and blocking estimator for well-conditioned high-dimensional daily cov...
The analysis of the intraday dynamics of covariances among high-frequency returns is challenging due...
We study the class of disentangled realized estimators for the integrated covariance matrix of Brown...
In this paper, we provide a framework to evaluate finite sample MSE of several realized covariance e...
Using high frequency data for the price dynamics of equities we measure the impact that market micro...
This paper proposes a new dynamic model of realized covariance (RCOV) matrices based on recent work ...
The paper develops a novel realized matrix-exponential stochastic volatility model of multivariate ...
This article proposes a consistent and efficient estimator of the high-frequency covariance (quadrat...
Summary: Motivated by the need for a positive-semidefinite estimator of multivariate realized covari...
Motivated by the need for a positive-semidefinite estimator of multivariate realized covariance matr...
Summary: Motivated by the need for a positive-semidefinite estimator of multivariate realized covari...
A multivariate positive definite estimator of the integrated covariance matrix of noisy and asynchro...
A multivariate positive definite estimator of the integrated covariance matrix of noisy and asynchro...
This paper studies the estimation problem of the covariance matrices of asset returns in the presenc...
We introduce a regularization and blocking estimator for well-conditioned high-dimensional daily cov...
The analysis of the intraday dynamics of covariances among high-frequency returns is challenging due...
We study the class of disentangled realized estimators for the integrated covariance matrix of Brown...
In this paper, we provide a framework to evaluate finite sample MSE of several realized covariance e...
Using high frequency data for the price dynamics of equities we measure the impact that market micro...
This paper proposes a new dynamic model of realized covariance (RCOV) matrices based on recent work ...
The paper develops a novel realized matrix-exponential stochastic volatility model of multivariate ...
This article proposes a consistent and efficient estimator of the high-frequency covariance (quadrat...