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Inference on the maximal rank of time-varying covariance matrices using high-frequency data

1 October 2021
M. Reiß
Lars Winkelmann
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Abstract

We study the rank of the instantaneous or spot covariance matrix ΣX(t)\Sigma_X(t)ΣX​(t) of a multidimensional continuous semi-martingale X(t)X(t)X(t). Given high-frequency observations X(i/n)X(i/n)X(i/n), i=0,…,ni=0,\ldots,ni=0,…,n, we test the null hypothesis rank(ΣX(t))≤rrank(\Sigma_X(t))\le rrank(ΣX​(t))≤r for all ttt against local alternatives where the average (r+1)(r+1)(r+1)st eigenvalue is larger than some signal detection rate vnv_nvn​. A major problem is that the inherent averaging in local covariance statistics produces a bias that distorts the rank statistics. We show that the bias depends on the regularity and a spectral gap of ΣX(t)\Sigma_X(t)ΣX​(t). We establish explicit matrix perturbation and concentration results that provide non-asymptotic uniform critical values and optimal signal detection rates vnv_nvn​. This leads to a rank estimation method via sequential testing. For a class of stochastic volatility models, we determine data-driven critical values via normed p-variations of estimated local covariance matrices. The methods are illustrated by simulations and an application to high-frequency data of U.S. government bonds.

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