ks_test | R Documentation |
A two-sample test using the Kolmogorov-Smirnov test statistic (ks_stat
).
ks_test(a, b, nboots = 2000, p = default.p, keep.boots = T, keep.samples = F)
ks_stat(a, b, power = def_power)
a |
a vector of numbers (or factors – see details) |
b |
a vector of numbers |
nboots |
Number of bootstrap iterations |
p |
power to raise test stat to |
keep.boots |
Should the bootstrap values be saved in the output? |
keep.samples |
Should the samples be saved in the output? |
power |
power to raise test stat to |
The KS test compares two ECDFs by looking at the maximum difference between them. Formally – if E is the ECDF of sample 1 and F is the ECDF of sample 2, then
KS = max |E(x)-F(x)|^p
for values of x in the joint sample. The test p-value is calculated by randomly resampling two samples of the same size using the combined sample.
In the example plot below, the KS statistic is the height of the vertical black line.
Inputs a
and b
can also be vectors of ordered (or unordered) factors, so long as both have the same levels and orderings. When possible, ordering factors will substantially increase power.
Output is a length 2 Vector with test stat and p-value in that order. That vector has 3 attributes – the sample sizes of each sample, and the number of bootstraps performed for the pvalue.
ks_test()
: Permutation based two sample Kolmogorov-Smirnov test
ks_stat()
: Permutation based two sample Kolmogorov-Smirnov test
dts_test()
for a more powerful test statistic. See kuiper_test()
or cvm_test()
for the natural successors to this test statistic.
set.seed(314159)
vec1 = rnorm(20)
vec2 = rnorm(20,0.5)
out = ks_test(vec1,vec2)
out
summary(out)
plot(out)
# Example using ordered factors
vec1 = factor(LETTERS[1:5],levels = LETTERS,ordered = TRUE)
vec2 = factor(LETTERS[c(1,2,2,2,4)],levels = LETTERS, ordered=TRUE)
ks_test(vec1,vec2)
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.