A novel method is proposed for detecting changes in the covariance structure of moderate dimensional time series. This non-linear test statistic has a number of useful properties. Most importantly, it is independent of the underlying structure of the covariance matrix. We discuss how results from Random Matrix Theory, can be used to study the behaviour of our test statistic in a moderate dimensional setting (i.e. the number of variables is comparable to the length of the data). In particular, we demonstrate that the test statistic converges point wise to a normal distribution under the null hypothesis. We evaluate the performance of the proposed approach on a range of simulated datasets and find that it outperforms a range of alternative re...
A nonparametric procedure for detecting and dating multiple change points in the correlation matrix ...
Multivariate statistical analyses, such as linear discriminant analysis, MANOVA, and profile analysi...
Statisticians are interested in testing the structure of covariance matrices, especially under the h...
International audienceThis paper is devoted to the problem of testing equality between the covarianc...
During the last twenty years, Random matrix theory (RMT) has produced numerous results that allow a ...
We propose a test for the stability over time of the covariance matrix of multivariate time series. ...
The stability of covariance matrix is a major issue in multivariate analysis. As can be seen in the ...
The stability of covariance matrix is a major issue in multivariate analysis. As can be seen in the ...
I consider multivariate (vector) time series models in which the error covariance matrix may be time...
Random matrix serves as one of the key tools in understanding the eigen-structure of large dimension...
We introduce methodology for analysing the mean size-and-shape and covariance matrix of landmark dat...
The covariance matrices are essential quantities in econometric and statistical applications includi...
In multivariate analysis, the covariance matrix associated with a set of variables of interest (name...
In this paper we proposed a new statistical test for testing the covariance matrix in one population...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
A nonparametric procedure for detecting and dating multiple change points in the correlation matrix ...
Multivariate statistical analyses, such as linear discriminant analysis, MANOVA, and profile analysi...
Statisticians are interested in testing the structure of covariance matrices, especially under the h...
International audienceThis paper is devoted to the problem of testing equality between the covarianc...
During the last twenty years, Random matrix theory (RMT) has produced numerous results that allow a ...
We propose a test for the stability over time of the covariance matrix of multivariate time series. ...
The stability of covariance matrix is a major issue in multivariate analysis. As can be seen in the ...
The stability of covariance matrix is a major issue in multivariate analysis. As can be seen in the ...
I consider multivariate (vector) time series models in which the error covariance matrix may be time...
Random matrix serves as one of the key tools in understanding the eigen-structure of large dimension...
We introduce methodology for analysing the mean size-and-shape and covariance matrix of landmark dat...
The covariance matrices are essential quantities in econometric and statistical applications includi...
In multivariate analysis, the covariance matrix associated with a set of variables of interest (name...
In this paper we proposed a new statistical test for testing the covariance matrix in one population...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
A nonparametric procedure for detecting and dating multiple change points in the correlation matrix ...
Multivariate statistical analyses, such as linear discriminant analysis, MANOVA, and profile analysi...
Statisticians are interested in testing the structure of covariance matrices, especially under the h...