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PMCMRplus (version 1.9.12)

kwManyOneConoverTest: Conover's Many-to-One Rank Comparison Test

Description

Performs Conover's non-parametric many-to-one comparison test for Kruskal-type ranked data.

Usage

kwManyOneConoverTest(x, ...)

# S3 method for default kwManyOneConoverTest( x, g, alternative = c("two.sided", "greater", "less"), p.adjust.method = c("single-step", p.adjust.methods), ... )

# S3 method for formula kwManyOneConoverTest( formula, data, subset, na.action, alternative = c("two.sided", "greater", "less"), p.adjust.method = c("single-step", p.adjust.methods), ... )

Value

A list with class "PMCMR" containing the following components:

method

a character string indicating what type of test was performed.

data.name

a character string giving the name(s) of the data.

statistic

lower-triangle matrix of the estimated quantiles of the pairwise test statistics.

p.value

lower-triangle matrix of the p-values for the pairwise tests.

alternative

a character string describing the alternative hypothesis.

p.adjust.method

a character string describing the method for p-value adjustment.

model

a data frame of the input data.

dist

a string that denotes the test distribution.

Arguments

x

a numeric vector of data values, or a list of numeric data vectors.

...

further arguments to be passed to or from methods.

g

a vector or factor object giving the group for the corresponding elements of "x". Ignored with a warning if "x" is a list.

alternative

the alternative hypothesis. Defaults to two.sided.

p.adjust.method

method for adjusting p values (see p.adjust).

formula

a formula of the form response ~ group where response gives the data values and group a vector or factor of the corresponding groups.

data

an optional matrix or data frame (or similar: see model.frame) containing the variables in the formula formula. By default the variables are taken from environment(formula).

subset

an optional vector specifying a subset of observations to be used.

na.action

a function which indicates what should happen when the data contain NAs. Defaults to getOption("na.action").

Details

For many-to-one comparisons (pairwise comparisons with one control) in an one-factorial layout with non-normally distributed residuals Conover's non-parametric test can be performed. Let there be \(k\) groups including the control, then the number of treatment levels is \(m = k - 1\). Then \(m\) pairwise comparisons can be performed between the \(i\)-th treatment level and the control. H\(_i: \theta_0 = \theta_i\) is tested in the two-tailed case against A\(_i: \theta_0 \ne \theta_i, ~~ (1 \le i \le m)\).

If p.adjust.method == "single-step" is selected, the \(p\)-values will be computed from the multivariate \(t\) distribution. Otherwise, the \(p\)-values are computed from the \(t\)-distribution using any of the \(p\)-adjustment methods as included in p.adjust.

References

Conover, W. J, Iman, R. L. (1979) On multiple-comparisons procedures, Tech. Rep. LA-7677-MS, Los Alamos Scientific Laboratory.

See Also

pmvt, TDist, kruskalTest, kwManyOneDunnTest, kwManyOneNdwTest

Examples

Run this code
## Data set PlantGrowth
## Global test
kruskalTest(weight ~ group, data = PlantGrowth)

## Conover's many-one comparison test
## single-step means p-value from multivariate t distribution
ans <- kwManyOneConoverTest(weight ~ group, data = PlantGrowth,
                             p.adjust.method = "single-step")
summary(ans)

## Conover's many-one comparison test
ans <- kwManyOneConoverTest(weight ~ group, data = PlantGrowth,
                             p.adjust.method = "holm")
summary(ans)

## Dunn's many-one comparison test
ans <- kwManyOneDunnTest(weight ~ group, data = PlantGrowth,
                             p.adjust.method = "holm")
summary(ans)

## Nemenyi's many-one comparison test
ans <- kwManyOneNdwTest(weight ~ group, data = PlantGrowth,
                        p.adjust.method = "holm")
summary(ans)

## Many one U test
ans <- manyOneUTest(weight ~ group, data = PlantGrowth,
                        p.adjust.method = "holm")
summary(ans)

## Chen Test
ans <- chenTest(weight ~ group, data = PlantGrowth,
                    p.adjust.method = "holm")
summary(ans)

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