Testing for unequal variances is usually performed in order to check the validity of the assumptions that underlie standard tests for differences between means (the t-test and anova). However, existing methods for testing for unequal variances (Levene's test and Bartlett's test) are notoriously non-robust to normality assumptions, especially for small sample sizes. Moreover, although these methods were designed to deal with one hypothesis at a time, modern applications (such as to microarrays and fMRI experiments) often involve parallel testing over a large number of levels (genes or voxels). Moreover, in these settings a shift in variance may be biologically relevant, perhaps even more so than a change in the mean. This paper proposes a pa...
The analysis of variance (ANOVA) is one of the most important and useful techniques for variety of f...
Background: Trait variances among genotype groups at a locus are expected to differ in the presence...
Abstract Background In many laboratory-based high throughput microarray experiments, there are very ...
We develop efficient and powerful statistical methods for high-dimensional data, where the sample si...
To test for equality of variances in independent random samples from multiple univariate normal popu...
Tests for equality of variances between two samples which contain both paired observations and indep...
This paper considers the problem of comparing several means under the one-way Analysis of Variance (...
Investigating differences between means of more than two groups or experimental conditions is a rout...
Investigating differences between means of more than two groups or experimental conditions is a rout...
One of the central messages of this dissertation is that (a) unequal variances may be more prevalent...
To test for equality of variances given two independent random samples from univariate normal popula...
The classic F test for the hypothesis concerning the equality of two population variances is known ...
In microarray experiments, accurate estimation of the gene variance is a key step in the identificat...
There are many important problems these days where consideration has to be given to carrying out hun...
We develop a test for equality of variances given two independent random samples of observations. Th...
The analysis of variance (ANOVA) is one of the most important and useful techniques for variety of f...
Background: Trait variances among genotype groups at a locus are expected to differ in the presence...
Abstract Background In many laboratory-based high throughput microarray experiments, there are very ...
We develop efficient and powerful statistical methods for high-dimensional data, where the sample si...
To test for equality of variances in independent random samples from multiple univariate normal popu...
Tests for equality of variances between two samples which contain both paired observations and indep...
This paper considers the problem of comparing several means under the one-way Analysis of Variance (...
Investigating differences between means of more than two groups or experimental conditions is a rout...
Investigating differences between means of more than two groups or experimental conditions is a rout...
One of the central messages of this dissertation is that (a) unequal variances may be more prevalent...
To test for equality of variances given two independent random samples from univariate normal popula...
The classic F test for the hypothesis concerning the equality of two population variances is known ...
In microarray experiments, accurate estimation of the gene variance is a key step in the identificat...
There are many important problems these days where consideration has to be given to carrying out hun...
We develop a test for equality of variances given two independent random samples of observations. Th...
The analysis of variance (ANOVA) is one of the most important and useful techniques for variety of f...
Background: Trait variances among genotype groups at a locus are expected to differ in the presence...
Abstract Background In many laboratory-based high throughput microarray experiments, there are very ...