Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

Is there a way to get significance codes after a pairwise comparisons to a Kruskall wallis test? With significance codes I mean letter codes that are assigned to populations to indicate where differences are significant.

With a traditional anova such a test can be performed using HSD.test from the agricolae library but for non parametric counterparts of anova I have not been able to find anything.

A small toy example:

dv  <-  c(runif(100, 5.0, 10))
iv  <-  as.factor( c(rep("I", 10),  rep("II", 10),  rep("III", 10),  rep("IV", 10), rep("V", 10),
                    rep("VI", 10), rep("VII", 10), rep("VIII", 10), rep("IX", 10), rep("X", 10)))

df  <-  data.frame(dv, iv)

# with anova
library(agricolae)
aov.000  <-  aov(dv ~ iv,  data=df)
HSD.test(aov.000, "iv")

# after KW test: 
(kt  <-  kruskal.test(dv ~ iv,  data=df))

library(coin)
library(multcomp)
NDWD <- oneway_test(dv ~ iv, data = df,
        ytrafo = function(data) trafo(data, numeric_trafo = rank),
        xtrafo = function(data) trafo(data, factor_trafo = function(x)
            model.matrix(~x - 1) %*% t(contrMat(table(x), "Tukey"))),
        teststat = "max", distribution = approximate(B=1000))

### global p-value
print(pvalue(NDWD))

### sites (I = II) != (III = IV) at alpha = 0.01 (page 244)
print(pvalue(NDWD, method = "single-step"))
share|improve this question
    
possible duplicate stackoverflow.com/questions/2478272/… – JT85 Apr 22 '14 at 11:07
up vote 3 down vote accepted

because it might be of use to others, the following seems to work (using the multcompView library):

library(multcompView)
mat  <-  data.frame(print(pvalue(NDWD, method = "single-step")))
(a   <-  c(mat[, 1]));  names(a)  <-  rownames(mat)
multcompLetters(a)

Alternatively the following will work:

test  <-  pairwise.wilcox.test(dv, iv, p.adj="bonferroni", exact=FALSE)
# test  <-  pairwise.wilcox.test(et.ef, s.t, p.adj="holm", exact=FALSE)

library(multcompView)
test$p.value
library(reshape)
(a <- melt(test$p.value))
a.cc  <-  na.omit(a)
a.pvals  <-  a.cc[, 3]
names(a.pvals)  <-  paste(a.cc[, 1], a.cc[, 2], sep="-")
a.pvals
multcompLetters(a.pvals)
share|improve this answer
    
Great! This will be handy for me someday. – Lucas Fortini Jun 6 '13 at 17:06
    
I get the following error Error in as.data.frame.default(x[[i]], optional = TRUE, stringsAsFactors = stringsAsFactors) : cannot coerce class ""ci"" to a data.frame after running mat <- data.frame(print(pvalue(NDWD, method = "single-step"))) – toto_tico Nov 13 '15 at 4:18

You can at least do it graphically using the multicomp package:

dv  <-  c(runif(100, 5.0, 10))
iv  <-  as.factor( c(rep("I", 10),  rep("II", 10),  rep("III", 10),  rep("IV", 10), rep("V", 10),
                rep("VI", 10), rep("VII", 10), rep("VIII", 10), rep("IX", 10), rep("X", 10)))
df  <-  data.frame(dv, iv)
anova_results  <-  aov(dv ~ iv,  data=df)
library(multcomp)
tuk <- glht(anova_results, linfct = mcp(iv = "Tukey"))
summary(tuk)          # standard display
tuk.cld <- cld(tuk)   # letter-based display
opar <- par(mai=c(1,1,1.5,1))
plot(tuk.cld)
par(opar)

Of course given your randomly generated data, the resulting plot is not very interesting, but will give you the groupings-

enter image description here

This is one of my plots, using the same approach:

enter image description here Lastly, if you do not want the graphics, you can dig into the package and easily find the string that stores the grouping information to be used elsewhere.

share|improve this answer
    
I dont want to use an anova though. The example can indeed be analysed with anaova (everything is normally distributed and variances are equal) but for the real data I am working on I need to use a non parametric test. – thijs van den bergh Jun 5 '13 at 9:34
    
Yes, I am sorry to have not caught the fact you wanted a non parametric test (it has been a while since I did KW tests). As of now, I do not know a way to do a similar plot on non-parametric contrast tests. However, as you may be aware, especially for simple designs such as a one-way comparison, you may try to perform the anova and contrast tests on ranks. If anything, you can compare your initial KW tests with anova on ranks to see how different the results are, and if not, apply the anova on ranks to be able to perform the post-hoc contrast tests. – Lucas Fortini Jun 5 '13 at 18:05

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.