circular (version 0.4-93)

watson.two.test: Watson's Two-Sample Test of Homogeneity

Description

Performs Watson's test for homogeneity on two samples of circular data.

Usage

watson.two.test(x, y, alpha=0)
# S3 method for watson.two.test
print(x, digits=4, …)

Arguments

x

a vector. The object is coerced to class circular.

y

a vector. The object is coerced to class circular.

alpha

significance level of the test. Valid levels are 0.001, 0.01, 0.05, 0.1. This argument may be ommited, in which case, a range for the p-value will be returned.

digits

integer indicating the precision to be used.

further arguments passed to or from other methods.

Value

a list with statistic, alpha and the number of observations of the first and second sample.

Details

Watson's two-sample test of homogeneity is performed, and the results are printed. If alpha is specified and non-zero, the test statistic is printed along with the critical value and decision. If alpha is omitted, the test statistic is printed and a range for the p-value of the test is given.

Critical values for the test statistic are obtained using the asymptotic distribution of the test statistic. It is recommended to use the obtained critical values and ranges for p-values only for combined sample sizes in excess of 17. Tables are available for smaller sample sizes and can be found in Mardia (1972) for instance.

References

Jammalamadaka, S. Rao and SenGupta, A. (2001). Topics in Circular Statistics, Section 7.5, World Scientific Press, Singapore.

Examples

Run this code
# NOT RUN {
# Perform a two-sample test of homogeneity on two
# simulated data sets.
data1 <- rvonmises(n=20, mu=circular(0), kappa=3)
data2 <- rvonmises(n=20, mu=circular(pi), kappa=2)
watson.two.test(data1, data2, alpha=0.05)
watson.two.test(data1, data2)
# }

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