This paper studies the problem of covariance estimation when prices are observed non-synchronously and contaminated by i.i.d. microstructure noise. We derive closed form expressions for the bias and variance of three popular covariance estimators, namely realised covariance, realised covariance plus lead and lag adjustments, and the Hayashi and Yoshida estimator, and present a comprehensive investigation into their properties and relative efficiency. Our main finding is that the ordering of the covariance estimators in terms of efficiency crucially depends on the level of microstructure noise, as well as the level of correlation. In fact, for sufficiently high levels of noise, the standard realised covariance estimator (without any correcti...
We propose a least squares regression framework for the estimation of the realized covariation matri...
We study market microstructure noise in high-frequency data and analyze its implications for the rea...
We propose a unified framework for estimating integrated variances and covariances based on simple O...
This paper studies the problem of covariance estimation when price observations are subject to non-s...
We analyze the effects of market microstructure noise on the Fourier estimator of multivariate volat...
We focus on estimating the integrated covariance of log-price processes in the presence of market mi...
We show how pre-averaging can be applied to the problem of measuring the ex-post covariance of finan...
There are many approaches for estimating an integrated variance and covariance in the presence of ma...
In this article, we consider the estimation of covariation of two asset prices which contain jumps a...
We study the class of disentangled realized estimators for the integrated covariance matrix of Brown...
This paper presents two classes of tick-by-tick covariance estimators adapted to the case of roundin...
In this paper, we provide a framework to evaluate finite sample MSE of several realized covariance e...
This article proposes a consistent and efficient estimator of the high-frequency covariance (quadrat...
This paper proposes an estimator of the covariance matrix of curren-cies using unsychronized and noi...
We introduce a new nonparametric method to measure microstructure noise, the deviation of the observ...
We propose a least squares regression framework for the estimation of the realized covariation matri...
We study market microstructure noise in high-frequency data and analyze its implications for the rea...
We propose a unified framework for estimating integrated variances and covariances based on simple O...
This paper studies the problem of covariance estimation when price observations are subject to non-s...
We analyze the effects of market microstructure noise on the Fourier estimator of multivariate volat...
We focus on estimating the integrated covariance of log-price processes in the presence of market mi...
We show how pre-averaging can be applied to the problem of measuring the ex-post covariance of finan...
There are many approaches for estimating an integrated variance and covariance in the presence of ma...
In this article, we consider the estimation of covariation of two asset prices which contain jumps a...
We study the class of disentangled realized estimators for the integrated covariance matrix of Brown...
This paper presents two classes of tick-by-tick covariance estimators adapted to the case of roundin...
In this paper, we provide a framework to evaluate finite sample MSE of several realized covariance e...
This article proposes a consistent and efficient estimator of the high-frequency covariance (quadrat...
This paper proposes an estimator of the covariance matrix of curren-cies using unsychronized and noi...
We introduce a new nonparametric method to measure microstructure noise, the deviation of the observ...
We propose a least squares regression framework for the estimation of the realized covariation matri...
We study market microstructure noise in high-frequency data and analyze its implications for the rea...
We propose a unified framework for estimating integrated variances and covariances based on simple O...