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Consider the following piece of toy-code (purely illustrative):

y <- data.frame(matrix(c(11,12,13,14,113,124,215,219),nrow=4));
y[,2] <- factor(y[,2]);
aov.result <- aov(y$X1 ~ y$X2, data=y);
thsd.result <- TukeyHSD(aov.result); # Produces NaNs but nevermind

the last command (fix) shows that the thsd.result object is a structure containing a list and nested structure:

structure(list(`df$X2` = structure(c(1, 2, 3, 1, 2, 1, NaN, NaN, 
NaN, NaN, NaN, NaN, NaN, NaN, NaN, NaN, NaN, NaN, NaN, NaN, NaN, 
NaN, NaN, NaN), .Dim = c(6L, 4L), .Dimnames = list(c("124-113", 
"215-113", "219-113", "215-124", "219-124", "219-215"), c("diff", 
"lwr", "upr", "p adj")))), .Names = "df$X2", class = c("multicomp", 
"TukeyHSD"), = quote(aov(formula = df$X1 ~ df$X2, data = df)), conf.level =     
0.95, ordered = FALSE);

My question is: How would I go about access this structure? I.e. How would I for example get the .Dimnames consisting of the pairs?

share|improve this question
It is just a list. Use [[.]] to access the elements as you'd normally in a list. The object this list holds is a matrix: thsd.result[[1]]. Then you can access the matrix directly. – Arun Feb 18 '13 at 16:03
str(thsd.result) is better suited for checking the structure than fix. – Roland Feb 18 '13 at 16:04

1 Answer 1

up vote 0 down vote accepted

do you mean like this:


and this:

> rownames(thsd.result[[1]])
[1] "124-113" "215-113" "219-113" "215-124" "219-124" "219-215"
> colnames(thsd.result[[1]])
[1] "diff"  "lwr"   "upr"   "p adj"

to get the result just access it using [[]].

See the results printed with:

thsd.result[[1]] and thsd.result[[1]][,1]

share|improve this answer
Yes. Exactly like that. Thanks a lot. – user1938803 Feb 18 '13 at 19:08

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