Testing for multi-dimensional white noise is an important subject in statistical inference. Such test in the high-dimensional case becomes an open problem waiting to be solved, especially when the dimension of a time series is comparable to or even greater than the sample size. To detect an arbitrary form of departure from high-dimensional white noise, a few tests have been developed. Some of these tests are based on max-type statistics, while others are based on sum-type ones. Despite the progress, an urgent issue awaits to be resolved: none of these tests is robust to the sparsity of the serial correlation structure. Motivated by this, we propose a Fisher's combination test by combining the max-type and the sum-type statistics, based on t...
This paper considers testing a covariance matrix Σ in the high dimensional setting where the dimensi...
With the recent advancement of data collection techniques, there has been an explosive growth in the...
In this paper, we study two-stage and sequential sampling procedures for estimating the rth power of...
Testing for white noise is a classical yet important problem in statistics, especially for diagnosti...
We propose a new omnibus test for vector white noise using the maximum absolute autocorrelations and...
This article considers testing that a time series is uncorrelated when it possibly exhibits some for...
In this dissertation, we proposed a new test for the serial correlation under high dimensionality, b...
This paper establishes the asymptotic independence between the quadratic form and maximum of a seque...
For a set of dependent random variables, without stationary or the strong mixing assumptions, we der...
Commonly used tests to assess evidence for the absence of autocorrelation in a univariate time serie...
We consider problem of signal detection in Gaussian white noise. Test statistics are linear combinat...
Multivariate analysis has undergone radical changes in the recent past with the advent of the so-cal...
Part I: The Gaussian white noise model has been used as a general framework for nonparametric proble...
Testing for association between two random vectors is a common and important task in many fields, ho...
In this paper we develop valid inference for high-dimensional time series. We extend the desparsifie...
This paper considers testing a covariance matrix Σ in the high dimensional setting where the dimensi...
With the recent advancement of data collection techniques, there has been an explosive growth in the...
In this paper, we study two-stage and sequential sampling procedures for estimating the rth power of...
Testing for white noise is a classical yet important problem in statistics, especially for diagnosti...
We propose a new omnibus test for vector white noise using the maximum absolute autocorrelations and...
This article considers testing that a time series is uncorrelated when it possibly exhibits some for...
In this dissertation, we proposed a new test for the serial correlation under high dimensionality, b...
This paper establishes the asymptotic independence between the quadratic form and maximum of a seque...
For a set of dependent random variables, without stationary or the strong mixing assumptions, we der...
Commonly used tests to assess evidence for the absence of autocorrelation in a univariate time serie...
We consider problem of signal detection in Gaussian white noise. Test statistics are linear combinat...
Multivariate analysis has undergone radical changes in the recent past with the advent of the so-cal...
Part I: The Gaussian white noise model has been used as a general framework for nonparametric proble...
Testing for association between two random vectors is a common and important task in many fields, ho...
In this paper we develop valid inference for high-dimensional time series. We extend the desparsifie...
This paper considers testing a covariance matrix Σ in the high dimensional setting where the dimensi...
With the recent advancement of data collection techniques, there has been an explosive growth in the...
In this paper, we study two-stage and sequential sampling procedures for estimating the rth power of...