| kruskal.test {stats} | R Documentation | 
Performs a Kruskal-Wallis rank sum test.
kruskal.test(x, ...) ## Default S3 method: kruskal.test(x, g, ...) ## S3 method for class 'formula': kruskal.test(formula, data, subset, na.action, ...)
x | 
a numeric vector of data values, or a list of numeric data vectors. | 
g | 
a vector or factor object giving the group for the
corresponding elements of x.  Ignored if x is a
list. | 
formula | 
a formula of the form lhs ~ rhs where lhs
gives the data values and rhs 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"). | 
... | 
further arguments to be passed to or from methods. | 
kruskal.test performs a Kruskal-Wallis rank sum test of the
null that the location parameters of the distribution of x
are the same in each group (sample).  The alternative is that they
differ in at least one.
If x is a list, its elements are taken as the samples to be
compared, and hence have to be numeric data vectors.  In this case,
g is ignored, and one can simply use kruskal.test(x)
to perform the test.  If the samples are not yet contained in a
list, use kruskal.test(list(x, ...)).
Otherwise, x must be a numeric data vector, and g must
be a vector or factor object of the same length as x giving
the group for the corresponding elements of x.
A list with class "htest" containing the following components:
statistic | 
the Kruskal-Wallis rank sum statistic. | 
parameter | 
the degrees of freedom of the approximate chi-squared distribution of the test statistic. | 
p.value | 
the p-value of the test. | 
method | 
the character string "Kruskal-Wallis rank sum test". | 
data.name | 
a character string giving the names of the data. | 
Myles Hollander & Douglas A. Wolfe (1973), Nonparametric statistical inference. New York: John Wiley & Sons. Pages 115–120.
The Wilcoxon rank sum test (wilcox.test) as the special
case for two samples;
lm together with anova for performing
one-way location analysis under normality assumptions; with Student's
t test (t.test) as the special case for two samples.
## Hollander & Wolfe (1973), 116.
## Mucociliary efficiency from the rate of removal of dust in normal
##  subjects, subjects with obstructive airway disease, and subjects
##  with asbestosis.
x <- c(2.9, 3.0, 2.5, 2.6, 3.2) # normal subjects
y <- c(3.8, 2.7, 4.0, 2.4)      # with obstructive airway disease
z <- c(2.8, 3.4, 3.7, 2.2, 2.0) # with asbestosis
kruskal.test(list(x, y, z))
## Equivalently,
x <- c(x, y, z)
g <- factor(rep(1:3, c(5, 4, 5)),
            labels = c("Normal subjects",
                       "Subjects with obstructive airway disease",
                       "Subjects with asbestosis"))
kruskal.test(x, g)
## Formula interface.
boxplot(Ozone ~ Month, data = airquality)
kruskal.test(Ozone ~ Month, data = airquality)