SIGN.test {PASWR2} | R Documentation |
Sign Test
Description
This function will test a hypothesis based on the sign test and reports linearly interpolated confidence intervals for one sample problems.
Usage
SIGN.test(
x,
y = NULL,
md = 0,
alternative = "two.sided",
conf.level = 0.95,
...
)
Arguments
x |
numeric vector; |
y |
optional numeric vector; |
md |
a single number representing the value of the population median specified by the null hypothesis |
alternative |
is a character string, one of |
conf.level |
confidence level for the returned confidence interval, restricted to lie between zero and one |
... |
further arguments to be passed to or from methods |
Details
Computes a “Dependent-samples Sign-Test” if both x
and y
are provided. If only x
is provided, computes the “Sign-Test.”
Value
A list of class htest_S
, containing the following components:
statistic |
the S-statistic (the number of positive differences between the data and the hypothesized median), with names attribute “S”. |
p.value |
the p-value for the test |
conf.int |
is a confidence interval (vector of length 2) for the true
median based on linear interpolation. The confidence level is recorded in the attribute
|
estimate |
is avector of length 1, giving the sample median; this
estimates the corresponding population parameter. Component |
null.value |
is the value of the median specified by the null hypothesis.
This equals the input argument |
alternative |
records the value of the input argument alternative:
|
data.name |
a character string (vector of length 1)
containing the actual name of the input vector |
Confidence.Intervals |
a 3 by 3 matrix containing the lower achieved confidence interval, the interpolated confidence interval, and the upper achived confidence interval |
Null Hypothesis
For the one-sample sign-test, the null hypothesis
is that the median of the population from which x
is drawn is
md
. For the two-sample dependent case, the null hypothesis is that
the median for the differences of the populations from which x
and
y
are drawn is md
. The alternative hypothesis indicates the
direction of divergence of the population median for x
from md
(i.e., "greater"
, "less"
, "two.sided"
.)
Assumptions
The median test assumes the parent population is continuous.
Note
The reported confidence interval is based on linear interpolation. The lower and upper confidence levels are exact.
Author(s)
Alan T. Arnholt <arnholtat@appstate.edu>
References
Gibbons, J.D. and Chakraborti, S. 1992. Nonparametric Statistical Inference. Marcel Dekker Inc., New York.
Kitchens, L.J. 2003. Basic Statistics and Data Analysis. Duxbury.
Conover, W. J. 1980. Practical Nonparametric Statistics, 2nd ed. Wiley, New York.
Lehmann, E. L. 1975. Nonparametrics: Statistical Methods Based on Ranks. Holden and Day, San Francisco.
See Also
Examples
with(data = PHONE, SIGN.test(call.time, md = 2.1))
# Computes two-sided sign-test for the null hypothesis
# that the population median is 2.1. The alternative
# hypothesis is that the median is not 2.1. An interpolated
# upper 95% upper bound for the population median will be computed.