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Robust estimation of a high-dimensional integrated covariance matrix
Authors:Takayuki Morimoto  Shuichi Nagata
Affiliation:1. Department of Mathematical Sciences, Kwansei Gakuin University, Sanda, Hyogo, Japan;2. School of Business Administration, Kwansei Gakuin University, Uegahara, Ichiban-cho, Nishinomiya, Hyogo, Japan
Abstract:In this article, we consider a robust method of estimating a realized covariance matrix calculated as the sum of cross products of intraday high-frequency returns. According to recent articles in financial econometrics, the realized covariance matrix is essentially contaminated with market microstructure noise. Although techniques for removing noise from the matrix have been studied since the early 2000s, they have primarily investigated a low-dimensional covariance matrix with statistically significant sample sizes. We focus on noise-robust covariance estimation under converse circumstances, that is, a high-dimensional covariance matrix possibly with a small sample size. For the estimation, we utilize a statistical hypothesis test based on the characteristic that the largest eigenvalue of the covariance matrix asymptotically follows a Tracy–Widom distribution. The null hypothesis assumes that log returns are not pure noises. If a sample eigenvalue is larger than the relevant critical value, then we fail to reject the null hypothesis. The simulation results show that the estimator studied here performs better than others as measured by mean squared error. The empirical analysis shows that our proposed estimator can be adopted to forecast future covariance matrices using real data.
Keywords:High-dimensional matrix  High-frequency data  Market microstructure noise  Realized covariance  Tracy–Widom law
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