We investigate the asymptotic distribution of the maximum of a frequency smoothed estimate of the spectral coherence of a M-variate complex Gaussian time series with mutually independent components when the dimension M and the number of samples N both converge to infinity. If B denotes the smoothing span of the underlying smoothed periodogram estimator, a type I extreme value limiting distribution is obtained under the rate assumptions M N → 0 and M B → c ∈ (0, +∞). This result is then exploited to build a statistic with controlled asymptotic level for testing independence between the M components of the observed time series. Numerical simulations support our results
Abstract. We study the tails of the distribution of the maximum of a stationary Gaussian process on ...
Recent work in econometrics has provided large bandwidth asymptotic theory for taper-based studentiz...
This paper studies the τ-coherence of a (n × p)-observation matrix in a Gaussian framework. The τ-co...
We investigate the asymptotic distribution of the maximum of a frequency smoothed estimate of the sp...
In this paper, we address the problem of detection, in the frequency domain, of a M-dimensional time...
In this paper, we address the problem of detection, in the frequency domain, of a M-dimensional time...
Sample auto-covariance matrix plays a crucial role in high dimensional times series analysis. In thi...
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Consider the empirical autocovariance matrix at a given non-zero time lag based on observations from...
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In this paper on developing shrinkage for spectral analysis of multivariate time series of high dime...
A useful approach for analysing multiple time series is via characterising their spectral density ma...
AbstractLet X1,X2,…,Xn be a sample from a stationary Gaussian time series and let I(·) be the sample...
Abstract. We study the tails of the distribution of the maximum of a stationary Gaussian process on ...
Recent work in econometrics has provided large bandwidth asymptotic theory for taper-based studentiz...
This paper studies the τ-coherence of a (n × p)-observation matrix in a Gaussian framework. The τ-co...
We investigate the asymptotic distribution of the maximum of a frequency smoothed estimate of the sp...
In this paper, we address the problem of detection, in the frequency domain, of a M-dimensional time...
In this paper, we address the problem of detection, in the frequency domain, of a M-dimensional time...
Sample auto-covariance matrix plays a crucial role in high dimensional times series analysis. In thi...
This article is concerned with the spectral behavior of $p$-dimensional linear processes in...
This paper is devoted to the estimation of the minimal dimension P of the state-space realizations o...
Consider the empirical autocovariance matrix at a given non-zero time lag based on observations from...
This paper considers the problem of detecting a few signals in high-dimensional complex-valued Gauss...
This article is concerned with the spectral behavior of p-dimensional linear processes in the modera...
In this paper on developing shrinkage for spectral analysis of multivariate time series of high dime...
A useful approach for analysing multiple time series is via characterising their spectral density ma...
AbstractLet X1,X2,…,Xn be a sample from a stationary Gaussian time series and let I(·) be the sample...
Abstract. We study the tails of the distribution of the maximum of a stationary Gaussian process on ...
Recent work in econometrics has provided large bandwidth asymptotic theory for taper-based studentiz...
This paper studies the τ-coherence of a (n × p)-observation matrix in a Gaussian framework. The τ-co...