DescTools (version 0.99.19)

SignTest: Sign Test

Description

Performs one- and two-sample sign tests on vectors of data.

Usage

SignTest(x, ...)
"SignTest"(x, y = NULL, alternative = c("two.sided", "less", "greater"), mu = 0, conf.level = 0.95, ... )
"SignTest"(formula, data, subset, na.action, ...)

Arguments

x
numeric vector of data values. Non-finite (e.g. infinite or missing) values will be omitted.
y
an optional numeric vector of data values: as with x non-finite values will be omitted.
mu
a number specifying an optional parameter used to form the null hypothesis. See Details.
alternative
is a character string, one of "greater", "less", or "two.sided", or the initial letter of each, indicating the specification of the alternative hypothesis. For one-sample tests, alternative refers to the true median of the parent population in relation to the hypothesized value of the median.
conf.level
confidence level for the returned confidence interval, restricted to lie between zero and one.
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.

Value

A list of class htest, containing the following components:

Details

The formula interface is only applicable for the 2-sample test.

SignTest computes a “Dependent-samples Sign-Test” if both x and y are provided. If only x is provided, the “One-sample Sign-Test” will be computed.

For the one-sample sign-test, the null hypothesis is that the median of the population from which x is drawn is mu. 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 mu. The alternative hypothesis indicates the direction of divergence of the population median for x from mu (i.e., "greater", "less", "two.sided".)

The confidence levels are exact.

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.

See Also

t.test, wilcox.test, ZTest, binom.test, SIGN.test in the package BSDA (reporting approximative confidence intervals).

Examples

Run this code
x <- c(1.83,  0.50,  1.62,  2.48, 1.68, 1.88, 1.55, 3.06, 1.30)
y <- c(0.878, 0.647, 0.598, 2.05, 1.06, 1.29, 1.06, 3.14, 1.29)

SignTest(x, y)
wilcox.test(x, y, paired = TRUE)


d.light <- data.frame( 
  black = c(25.85,28.84,32.05,25.74,20.89,41.05,25.01,24.96,27.47),
  white <- c(18.23,20.84,22.96,19.68,19.5,24.98,16.61,16.07,24.59),
  d <- c(7.62,8,9.09,6.06,1.39,16.07,8.4,8.89,2.88)
)

d <- d.light$d

SignTest(x=d, mu = 4)
wilcox.test(x=d, mu = 4, conf.int = TRUE)

SignTest(x=d, mu = 4, alternative="less")
wilcox.test(x=d, mu = 4, conf.int = TRUE, alternative="less")

SignTest(x=d, mu = 4, alternative="greater")
wilcox.test(x=d, mu = 4, conf.int = TRUE, alternative="greater")

# test die interfaces
x <- runif(10)
y <- runif(10)
g <- rep(1:2, each=10) 
xx <- c(x, y)

SignTest(x ~ group, data=data.frame(x=xx, group=g ))
SignTest(xx ~ g)
SignTest(x, y)

SignTest(x - y)

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