Nonparametric simple-contrast estimates for one-way layouts based on Hodges-Lehmann estimators for two samples and confidence intervals for all contrasts involving only two treatments are found in the literature.Tests for such contrasts are performed from the distribution of the maximum of the rank sum between two treatments. For random block designs, simple contrast estimates based on Hodges-Lehmann estimators for one sample are presented. However, discussions concerning the significance levels of more complex contrast tests in nonparametric statistics are not well outlined.This work aims at presenting a methodology to obtain p-values for any contrast types based on the construction of the permutations required by each design model using a...
Master of ScienceDepartment of StatisticsPaul I. NelsonA Bonferroni and an ordered P-value solution ...
A simulation study was conducted to investigate the performance of variance statistics for testing d...
One-way layouts, i.e., a single factor with several levels and multiple observations at each level, ...
When experimental units are grouped into homogeneous blocks, differences among experimental treatmen...
The relative power of three possible experimental designs under the condition that data is to be ana...
Several tests for the comparison of different groups in the randomized complete block design exist. ...
This investigation concerns the design of experiments whose purpose is to compare the joint effects ...
\u3cp\u3eContrast analysis is a relatively simple but effective statistical method for testing theor...
In this article, a comparison between the most promising nonparametric tests in a two-sample stratif...
A method for obtaining optimal designs from the class of variance balanced and connected designs was...
A general method is presented for randomising a block design while preserving the neighbour relation...
In many scientific disciplines and industrial fields, when dealing with comparisons between two or m...
This article argues for the use of contrasts to test a priori interaction hypotheses in 2-way analys...
An increasing number of R packages include nonparametric tests for the interaction in two-way factor...
The two-way two-levels crossed factorial design is a commonly-used design by practitioners at the ex...
Master of ScienceDepartment of StatisticsPaul I. NelsonA Bonferroni and an ordered P-value solution ...
A simulation study was conducted to investigate the performance of variance statistics for testing d...
One-way layouts, i.e., a single factor with several levels and multiple observations at each level, ...
When experimental units are grouped into homogeneous blocks, differences among experimental treatmen...
The relative power of three possible experimental designs under the condition that data is to be ana...
Several tests for the comparison of different groups in the randomized complete block design exist. ...
This investigation concerns the design of experiments whose purpose is to compare the joint effects ...
\u3cp\u3eContrast analysis is a relatively simple but effective statistical method for testing theor...
In this article, a comparison between the most promising nonparametric tests in a two-sample stratif...
A method for obtaining optimal designs from the class of variance balanced and connected designs was...
A general method is presented for randomising a block design while preserving the neighbour relation...
In many scientific disciplines and industrial fields, when dealing with comparisons between two or m...
This article argues for the use of contrasts to test a priori interaction hypotheses in 2-way analys...
An increasing number of R packages include nonparametric tests for the interaction in two-way factor...
The two-way two-levels crossed factorial design is a commonly-used design by practitioners at the ex...
Master of ScienceDepartment of StatisticsPaul I. NelsonA Bonferroni and an ordered P-value solution ...
A simulation study was conducted to investigate the performance of variance statistics for testing d...
One-way layouts, i.e., a single factor with several levels and multiple observations at each level, ...