The multivariate location problem is addressed. The most familiar method to address the problem is the Hotelling test. When the hypothesis of normal distributions holds, the Hotelling test is optimal. Unfortunately, in practice the distributions underlying the samples are generally unknown and without assuming normality the finite sample unbiasedness of the Hotelling test is not guaranteed. Moreover, high-dimensional data are increasingly encountered when analyzing medical and biological problems, and in these situations the Hotelling test performs poorly or cannot be computed. A test that is unbiased for non-normal data, for small sample sizes as well as for two-sided alternatives and that can be computed for high-dimensional data has been...
Classical univariate measures of asymmetry such as Pearson’s (mean-median)/σ or (mean-mode)/σ often ...
In biomedical research, multiple endpoints are commonly analyzed in "omics" fields like genomics, pr...
Summary: Permutation tests based on distances among multivariate observations have found many applic...
The multivariate location problem is addressed. The most familiar method to address the problem is t...
Modern data collection techniques allow to analyze a very large number of endpoints. In biomedical r...
A class of multivariate tests for case-control studies with high-dimensional low sample size data an...
A class of multivariate tests for case-control studies with high-dimensional low sample size data an...
There are plenty of tests for multivariate location around which all make slightly different assumpt...
A class of multivariate tests for case-control studies with high-dimensional low sample size data an...
In this paper, we have proposed two nonparametric tests for testing equal-ity of location parameters...
Most multivariate tests are based on the hypothesis of multinormality. But often this hypothesis fai...
Randles' one sample multivariate sign test based on interdirections is extended to two sample and mu...
<div><p>This article presents and investigates performance of a series of robust multivariate nonpar...
This thesis investigates basic properties of the interpoint distances be- tween random vectors drawn...
Multivariate matching is used to remove bias between treatment and control groups in observational s...
Classical univariate measures of asymmetry such as Pearson’s (mean-median)/σ or (mean-mode)/σ often ...
In biomedical research, multiple endpoints are commonly analyzed in "omics" fields like genomics, pr...
Summary: Permutation tests based on distances among multivariate observations have found many applic...
The multivariate location problem is addressed. The most familiar method to address the problem is t...
Modern data collection techniques allow to analyze a very large number of endpoints. In biomedical r...
A class of multivariate tests for case-control studies with high-dimensional low sample size data an...
A class of multivariate tests for case-control studies with high-dimensional low sample size data an...
There are plenty of tests for multivariate location around which all make slightly different assumpt...
A class of multivariate tests for case-control studies with high-dimensional low sample size data an...
In this paper, we have proposed two nonparametric tests for testing equal-ity of location parameters...
Most multivariate tests are based on the hypothesis of multinormality. But often this hypothesis fai...
Randles' one sample multivariate sign test based on interdirections is extended to two sample and mu...
<div><p>This article presents and investigates performance of a series of robust multivariate nonpar...
This thesis investigates basic properties of the interpoint distances be- tween random vectors drawn...
Multivariate matching is used to remove bias between treatment and control groups in observational s...
Classical univariate measures of asymmetry such as Pearson’s (mean-median)/σ or (mean-mode)/σ often ...
In biomedical research, multiple endpoints are commonly analyzed in "omics" fields like genomics, pr...
Summary: Permutation tests based on distances among multivariate observations have found many applic...