We consider the problem of detecting distributional changes in a sequence of high dimensional data. Our proposed methods are nonparametric, suitable for either continuous or discrete data, and are based on weighted cumulative sums of U-statistics stemming from $L_p$ norms. We establish the asymptotic distribution of our proposed test statistics separately in cases of weakly dependent and strongly dependent coordinates as $\min\{N,d\}\to\infty$, where $N$ denotes sample size and $d$ is the dimension, and also provide sufficient conditions for consistency of the proposed test procedures under a general fixed alternative with one change point. We further assess finite sample performance of the test procedures through Monte Carlo studies, and c...
Detecting and locating changes in highly multivariate data is a major concern in several current sta...
As we are entering the big data era with technological advances of data collection, high-dimensional...
International audienceIn this paper we study the kernel change-point algorithm (KCP) proposed by Arl...
This manuscript makes two contributions to the field of change-point detection. In a generalchange-p...
Owing to the advances in the science and technology, there is a surge of interest in high-dimensiona...
AbstractAsymptotic distributions of U-statistics to test for possible changes in the distribution wi...
We introduce and study two new inferential challenges associated with the sequential detection of ch...
While there is considerable work on change point analysis in univariate time series, more and more d...
International audienceThe detection of change-points in a spatially or time ordered data sequence is...
AbstractLet {Yk,k∈Z} be a d-dimensional stationary process, and g(d)=(g1(Y1,…Yn),…,gd(Y1,…Yn))t be a...
In this paper, the limitation that is prominent in most existing works of change-point detection met...
We propose a method for the detection of a change point in a sequence $\{F_i\}$ of distributions, wh...
We propose an inference method for detecting multiple change points in high-dimensional time series,...
The aim of this paper is to develop a change-point test for functional time series that uses the ful...
We propose statistical methodologies for high dimensional change point detection and inference for B...
Detecting and locating changes in highly multivariate data is a major concern in several current sta...
As we are entering the big data era with technological advances of data collection, high-dimensional...
International audienceIn this paper we study the kernel change-point algorithm (KCP) proposed by Arl...
This manuscript makes two contributions to the field of change-point detection. In a generalchange-p...
Owing to the advances in the science and technology, there is a surge of interest in high-dimensiona...
AbstractAsymptotic distributions of U-statistics to test for possible changes in the distribution wi...
We introduce and study two new inferential challenges associated with the sequential detection of ch...
While there is considerable work on change point analysis in univariate time series, more and more d...
International audienceThe detection of change-points in a spatially or time ordered data sequence is...
AbstractLet {Yk,k∈Z} be a d-dimensional stationary process, and g(d)=(g1(Y1,…Yn),…,gd(Y1,…Yn))t be a...
In this paper, the limitation that is prominent in most existing works of change-point detection met...
We propose a method for the detection of a change point in a sequence $\{F_i\}$ of distributions, wh...
We propose an inference method for detecting multiple change points in high-dimensional time series,...
The aim of this paper is to develop a change-point test for functional time series that uses the ful...
We propose statistical methodologies for high dimensional change point detection and inference for B...
Detecting and locating changes in highly multivariate data is a major concern in several current sta...
As we are entering the big data era with technological advances of data collection, high-dimensional...
International audienceIn this paper we study the kernel change-point algorithm (KCP) proposed by Arl...