cor.test {stats} | R Documentation |
Test for association between paired samples, using one of
Pearson's product moment correlation coefficient,
Kendall's \tau
or Spearman's \rho
.
cor.test(x, ...)
## Default S3 method:
cor.test(x, y,
alternative = c("two.sided", "less", "greater"),
method = c("pearson", "kendall", "spearman"),
exact = NULL, conf.level = 0.95, ...)
## S3 method for class 'formula'
cor.test(formula, data, subset, na.action, ...)
x , y |
numeric vectors of data values. |
alternative |
indicates the alternative hypothesis and must be
one of |
method |
a character string indicating which correlation
coefficient is to be used for the test. One of |
exact |
a logical indicating whether an exact p-value should be
computed. Used for Kendall's |
conf.level |
confidence level for the returned confidence interval. Currently only used for the Pearson product moment correlation coefficient if there are at least 4 complete pairs of observations. |
formula |
a formula of the form |
data |
an optional matrix or data frame (or similar: see
|
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 |
... |
further arguments to be passed to or from methods. |
The three methods each estimate the association between paired samples
and compute a test of the value being zero. They use different
measures of association, all in the range [-1, 1]
with 0
indicating no association. These are sometimes referred to as tests
of no correlation, but that term is often confined to the
default method.
If method
is "pearson"
, the test statistic is based on
Pearson's product moment correlation coefficient cor(x, y)
and
follows a t distribution with length(x)-2
degrees of freedom
if the samples follow independent normal distributions. If there are
at least 4 complete pairs of observation, an asymptotic confidence
interval is given based on Fisher's Z transform.
If method
is "kendall"
or "spearman"
, Kendall's
\tau
or Spearman's \rho
statistic is used to
estimate a rank-based measure of association. These tests may be used
if the data do not necessarily come from a bivariate normal
distribution.
For Kendall's test, by default (if exact
is NULL), an exact
p-value is computed if there are less than 50 paired samples containing
finite values and there are no ties. Otherwise, the test statistic is
the estimate scaled to zero mean and unit variance, and is approximately
normally distributed.
For Spearman's test, p-values are computed using algorithm AS 89.
A list with class "htest"
containing the following components:
statistic |
the value of the test statistic. |
parameter |
the degrees of freedom of the test statistic in the case that it follows a t distribution. |
p.value |
the p-value of the test. |
estimate |
the estimated measure of association, with name
|
null.value |
the value of the association measure under the
null hypothesis, always |
alternative |
a character string describing the alternative hypothesis. |
method |
a character string indicating how the association was measured. |
data.name |
a character string giving the names of the data. |
conf.int |
a confidence interval for the measure of association. Currently only given for Pearson's product moment correlation coefficient in case of at least 4 complete pairs of observations. |
D. J. Best & D. E. Roberts (1975),
Algorithm AS 89: The Upper Tail Probabilities of Spearman's
\rho
.
Applied Statistics, 24, 377–379.
Myles Hollander & Douglas A. Wolfe (1973), Nonparametric Statistical Methods. New York: John Wiley & Sons. Pages 185–194 (Kendall and Spearman tests).
## Hollander & Wolfe (1973), p. 187f.
## Assessment of tuna quality. We compare the Hunter L measure of
## lightness to the averages of consumer panel scores (recoded as
## integer values from 1 to 6 and averaged over 80 such values) in
## 9 lots of canned tuna.
x <- c(44.4, 45.9, 41.9, 53.3, 44.7, 44.1, 50.7, 45.2, 60.1)
y <- c( 2.6, 3.1, 2.5, 5.0, 3.6, 4.0, 5.2, 2.8, 3.8)
## The alternative hypothesis of interest is that the
## Hunter L value is positively associated with the panel score.
cor.test(x, y, method = "kendall", alternative = "greater")
## => p=0.05972
cor.test(x, y, method = "kendall", alternative = "greater",
exact = FALSE) # using large sample approximation
## => p=0.04765
## Compare this to
cor.test(x, y, method = "spearm", alternative = "g")
cor.test(x, y, alternative = "g")
## Formula interface.
require(graphics)
pairs(USJudgeRatings)
cor.test(~ CONT + INTG, data = USJudgeRatings)