public class WilcoxonSignedRankTest extends Object
| Constructor and Description |
|---|
WilcoxonSignedRankTest()
Create a test instance where NaN's are left in place and ties get the
average of applicable ranks.
|
WilcoxonSignedRankTest(NaNStrategy nanStrategy,
TiesStrategy tiesStrategy)
Create a test instance using the given strategies for NaN's and ties.
|
| Modifier and Type | Method and Description |
|---|---|
double |
wilcoxonSignedRank(double[] x,
double[] y)
Computes the
Wilcoxon signed ranked statistic comparing means for two related
samples or repeated measurements on a single sample.
|
double |
wilcoxonSignedRankTest(double[] x,
double[] y,
boolean exactPValue)
Returns the observed significance level, or
p-value, associated with a
Wilcoxon signed ranked statistic comparing mean for two related
samples or repeated measurements on a single sample.
|
public WilcoxonSignedRankTest()
public WilcoxonSignedRankTest(NaNStrategy nanStrategy, TiesStrategy tiesStrategy)
nanStrategy - specifies the strategy that should be used for
Double.NaN'stiesStrategy - specifies the strategy that should be used for tiespublic double wilcoxonSignedRank(double[] x,
double[] y)
throws MathIllegalArgumentException,
NullArgumentException
This statistic can be used to perform a Wilcoxon signed ranked test evaluating the null hypothesis that the two related samples or repeated measurements on a single sample have equal mean.
Let Xi denote the i'th individual of the first sample and Yi the related i'th individual in the second sample. Let Zi = Yi - Xi.
Preconditions:
x - the first sampley - the second sampleNullArgumentException - if x or y are null.MathIllegalArgumentException - if x or y are
zero-length.MathIllegalArgumentException - if x and y do not
have the same length.public double wilcoxonSignedRankTest(double[] x,
double[] y,
boolean exactPValue)
throws MathIllegalArgumentException,
NullArgumentException,
MathIllegalStateException
Let Xi denote the i'th individual of the first sample and Yi the related i'th individual in the second sample. Let Zi = Yi - Xi.
Preconditions:
exactPValue is false, the normal approximation is used
to estimate the p-value including a continuity correction factor.
wilcoxonSignedRankTest(x, y, true) should give the same results
as wilcox.test(x, y, alternative = "two.sided", mu = 0,
paired = TRUE, exact = FALSE, correct = TRUE) in R (as long as
there are no tied pairs in the data).x - the first sampley - the second sampleexactPValue - if the exact p-value is wanted (only works for
x.length <= 30, if true and x.length > 30, MathIllegalArgumentException is thrown)NullArgumentException - if x or y are null.MathIllegalArgumentException - if x or y are
zero-length or for all i, x[i] == y[i]MathIllegalArgumentException - if x and y do not
have the same length.MathIllegalArgumentException - if exactPValue is
true and x.length > 30MathIllegalStateException - if the p-value can not be computed due
to a convergence errorMathIllegalStateException - if the maximum number of iterations is
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