Performs a G-test for comparing response probabilities (i.e. when the response variable is a binary variable). The function is in fact a wrapper to the G-test for comparison of proportions on a contingency table. If the p-value of the test is significant, the function performs pairwise comparisons by using G-tests.
G.bintest(formula, data, alpha = 0.05, p.method = "fdr")
a character string giving the name of the global test computed.
a character string giving the name(s) of the data.
a character string describing the alternative hypothesis.
the estimated probabilities.
the value of the difference in probabilities under the null hypothesis, always 0.
test statistics.
test degrees of freedom.
p-value of the global test.
significance level.
method for p-values correction.
data frame of pairwise comparisons result.
a character string giving the name of the test computed for pairwise comparisons.
a formula of the form a ~ b
, where a
and b
give the data values and corresponding groups, respectively. a
can be a numeric vector or a factor, with only two possible values (except NA).
an optional data frame containing the variables in the formula formula
. By default the variables are taken from environment(formula)
.
significance level to compute pairwise comparisons.
method for p-values correction. See help of p.adjust
.
Maxime HERVE <maxime.herve@univ-rennes1.fr>
If the response is a 0/1 variable, the probability of the '1' group is tested. In any other cases, the response is transformed into a factor and the probability of the second level is tested.
Since a G-test is an approximate test, an exact test is preferable when the number of individuals is small (200 is a reasonable minimum). See fisher.bintest
in that case.
chisq.bintest
, fisher.bintest
response <- c(rep(0:1,c(40,60)),rep(0:1,c(55,45)),rep(0:1,c(65,35)))
fact <- gl(3,100,labels=LETTERS[1:3])
G.bintest(response~fact)
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