Testing for white noise is a classical yet important problem in statistics, especially for diagnostic checks in time series modeling and linear regression. For high-dimensional time series in the sense that the dimension p is large in relation to the sample size T, the popular omnibus tests including the multivariate Hosking and Li-McLeod tests are extremely conservative, leading to substantial power loss. To develop more relevant tests for high-dimensional cases, we propose a portmanteau-type test statistic which is the sum of squared singular values of the first q lagged sample autocovariance matrices. It, therefore, encapsulates all the serial correlations (upto the time lag q) within and across all component series. Using the tools from...
Commonly used tests to assess evidence for the absence of autocorrelation in a univariate time serie...
In this paper, we address the problem of detection, in the frequency domain, of a M-dimensional time...
This paper is concerned with tests for serial correlation in time series and in the errors of regres...
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...
Testing for multi-dimensional white noise is an important subject in statistical inference. Such tes...
Sample auto-covariance matrix plays a crucial role in high dimensional times series analysis. In thi...
Commonly used tests to assess evidence for the absence of autocorrelation in a univariate time serie...
This article considers testing that a time series is uncorrelated when it possibly exhibits some for...
In this paper, we consider two-sample tests for covariance matrices in high-dimensional settings. We...
Multivariate analysis has undergone radical changes in the recent past with the advent of the so-cal...
In this paper, we study two-stage and sequential sampling procedures for estimating the rth power of...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
This document contains three sections. The first two present new methods for two-sample testing wher...
In this dissertation, we proposed a new test for the serial correlation under high dimensionality, b...
Commonly used tests to assess evidence for the absence of autocorrelation in a univariate time serie...
In this paper, we address the problem of detection, in the frequency domain, of a M-dimensional time...
This paper is concerned with tests for serial correlation in time series and in the errors of regres...
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...
Testing for multi-dimensional white noise is an important subject in statistical inference. Such tes...
Sample auto-covariance matrix plays a crucial role in high dimensional times series analysis. In thi...
Commonly used tests to assess evidence for the absence of autocorrelation in a univariate time serie...
This article considers testing that a time series is uncorrelated when it possibly exhibits some for...
In this paper, we consider two-sample tests for covariance matrices in high-dimensional settings. We...
Multivariate analysis has undergone radical changes in the recent past with the advent of the so-cal...
In this paper, we study two-stage and sequential sampling procedures for estimating the rth power of...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
This document contains three sections. The first two present new methods for two-sample testing wher...
In this dissertation, we proposed a new test for the serial correlation under high dimensionality, b...
Commonly used tests to assess evidence for the absence of autocorrelation in a univariate time serie...
In this paper, we address the problem of detection, in the frequency domain, of a M-dimensional time...
This paper is concerned with tests for serial correlation in time series and in the errors of regres...