AbstractA weighted multivariate signed-rank test is introduced for an analysis of multivariate clustered data. Observations in different clusters may then get different weights. The test provides a robust and efficient alternative to normal theory based methods. Asymptotic theory is developed to find the approximate p-value as well as to calculate the limiting Pitman efficiency of the test. A conditionally distribution-free version of the test is also discussed. The finite-sample behavior of different versions of the test statistic is explored by simulations and the new test is compared to the unweighted and weighted versions of Hotelling’s T2 test and the multivariate spatial sign test introduced in [D. Larocque, J. Nevalainen, H. Oja, A w...
Rank-based inference is widely used because of its robustness. This article provides optimal rank-ba...
K-means algorithm was employed for clustering the samples into 3 groups. We highlighted all p-values...
K-means algorithm was employed for clustering the samples into 3 groups. We highlighted all p-values...
AbstractA weighted multivariate signed-rank test is introduced for an analysis of multivariate clust...
We consider the multivariate location problem with cluster-correlated data. A family of multivariate...
This paper considers the one-sample sign test for data obtained from general ranked set sampling whe...
Les textes publiés dans la série des rapports de recherche HEC n’engagent que la responsabilite ́ ...
Rank correlations have found many innovative applications in the last decade. In particular,suitable...
We generalize signed rank statistics to dimensions higher than one. This results in a class of ortho...
Clustering is the problem of partitioning data into a finite number, k, of homogeneous and separate ...
Clustering is the problem of partitioning data into a finite number, k, of homogeneous and separate...
Summary. In the analysis of clustered categorical data, it is of common interest to test for the cor...
By modifying the method of projection, the results of Hajek and Huskova are extended to show the asy...
summary:The problem of testing hypothesis of randomness against a group of alternatives of regressio...
In this article, we introduce a bivariate sign test for the one-sample bivariate location model usin...
Rank-based inference is widely used because of its robustness. This article provides optimal rank-ba...
K-means algorithm was employed for clustering the samples into 3 groups. We highlighted all p-values...
K-means algorithm was employed for clustering the samples into 3 groups. We highlighted all p-values...
AbstractA weighted multivariate signed-rank test is introduced for an analysis of multivariate clust...
We consider the multivariate location problem with cluster-correlated data. A family of multivariate...
This paper considers the one-sample sign test for data obtained from general ranked set sampling whe...
Les textes publiés dans la série des rapports de recherche HEC n’engagent que la responsabilite ́ ...
Rank correlations have found many innovative applications in the last decade. In particular,suitable...
We generalize signed rank statistics to dimensions higher than one. This results in a class of ortho...
Clustering is the problem of partitioning data into a finite number, k, of homogeneous and separate ...
Clustering is the problem of partitioning data into a finite number, k, of homogeneous and separate...
Summary. In the analysis of clustered categorical data, it is of common interest to test for the cor...
By modifying the method of projection, the results of Hajek and Huskova are extended to show the asy...
summary:The problem of testing hypothesis of randomness against a group of alternatives of regressio...
In this article, we introduce a bivariate sign test for the one-sample bivariate location model usin...
Rank-based inference is widely used because of its robustness. This article provides optimal rank-ba...
K-means algorithm was employed for clustering the samples into 3 groups. We highlighted all p-values...
K-means algorithm was employed for clustering the samples into 3 groups. We highlighted all p-values...