We consider the multivariate location problem with cluster-correlated data. A family of multivariate weighted sign tests is introduced for which observations from different clusters can receive different weights. Under weak assumptions, the test statistic is asymptotically distributed as a chi-squared random variable as the number of clusters goes to infinity. The asymptotic distribution of the test statistic is also given for a local alternative model under multivariate normality. Optimal weights maximizing Pitman asymptotic efficiency are provided. These weights depend on the cluster sizes and on the intracluster correlation. Several approaches for estimating these weights are presented. Using Pitman asymptotic efficiency, we show that ap...
This paper analyzes the problem of using the sample covariance matrix to detect the presence of clus...
Randles' one sample multivariate sign test based on interdirections is extended to two sample and mu...
Recently, new nonparametric multivariate extensions of the univariate sign methods have been propose...
AbstractA weighted multivariate signed-rank test is introduced for an analysis of multivariate clust...
This paper considers the one-sample sign test for data obtained from general ranked set sampling whe...
In this article, we introduce a bivariate sign test for the one-sample bivariate location model usin...
The aim of this paper is to find optimal alternatives bivariate ranked set sample for one sample loc...
Multivariate sign tests attracted several statisticians in the past, and it is evident from recent n...
Clustering is the problem of partitioning data into a finite number, k, of homogeneous and separate ...
There are plenty of tests for multivariate location around which all make slightly different assumpt...
Les textes publiés dans la série des rapports de recherche HEC n’engagent que la responsabilite ́ ...
AbstractThis paper analyzes the problem of using the sample covariance matrix to detect the presence...
Clustering is the problem of partitioning data into a finite number, k, of homogeneous and separate...
summary:The problem of testing hypothesis of randomness against a group of alternatives of regressio...
The aim of this paper is to find an optimal alternative bivariate ranked-set sample for one-sample l...
This paper analyzes the problem of using the sample covariance matrix to detect the presence of clus...
Randles' one sample multivariate sign test based on interdirections is extended to two sample and mu...
Recently, new nonparametric multivariate extensions of the univariate sign methods have been propose...
AbstractA weighted multivariate signed-rank test is introduced for an analysis of multivariate clust...
This paper considers the one-sample sign test for data obtained from general ranked set sampling whe...
In this article, we introduce a bivariate sign test for the one-sample bivariate location model usin...
The aim of this paper is to find optimal alternatives bivariate ranked set sample for one sample loc...
Multivariate sign tests attracted several statisticians in the past, and it is evident from recent n...
Clustering is the problem of partitioning data into a finite number, k, of homogeneous and separate ...
There are plenty of tests for multivariate location around which all make slightly different assumpt...
Les textes publiés dans la série des rapports de recherche HEC n’engagent que la responsabilite ́ ...
AbstractThis paper analyzes the problem of using the sample covariance matrix to detect the presence...
Clustering is the problem of partitioning data into a finite number, k, of homogeneous and separate...
summary:The problem of testing hypothesis of randomness against a group of alternatives of regressio...
The aim of this paper is to find an optimal alternative bivariate ranked-set sample for one-sample l...
This paper analyzes the problem of using the sample covariance matrix to detect the presence of clus...
Randles' one sample multivariate sign test based on interdirections is extended to two sample and mu...
Recently, new nonparametric multivariate extensions of the univariate sign methods have been propose...