# R: merge data frames for cohen's kappa

I'm trying to analyze some date using R but I'm not very familiar with R (yet) and therefore I'm totally stuck.

What I try to do is manipulate my input data so I can use it to calculate Cohen's Kappa. Now the problem is, that for rater_1, I have several ratings for some of the items and I need to select one. If rater_1 has given the same rate on an item as rater_2, then this rating should be chosen, if not any rating of the list can be used.

I tried

``````unique(merge(rater_1, rater_2, all.x=TRUE))
``````

which brings me close, but if the ratings between the two raters diverge, only one is kept.

So, my question is, how do I get from

``````item rating_1
1    3
2    5
3    4

item rating_2
1    2
1    3
2    4
2    1
2    2
3    4
3    2
``````

to

``````item rating_1 rating_2
1    3         3
2    5         4
3    4         4
``````

?

-

There are some fancy ways to do this, but I thought it might be helpful to combine a few basic techniques to accomplish this task. Usually, in your question, you should include some easy way to generate your data, like this:

``````# Create some sample data
set.seed(1)
id<-rep(1:50)
rater_1<-sample(1:5,50,replace=TRUE)
df1<-data.frame(id,rater_1)

id<-rep(1:50,each=2)
rater_2<-sample(1:5,100,replace=TRUE)
df2<-data.frame(id,rater_2)
``````

Now, here is one simple technique for doing this.

``````# Merge together the data frames.
all.merged<-merge(df1,df2)
#   id rater_1 rater_2
# 1  1       2       3
# 2  1       2       5
# 3  2       2       3
# 4  2       2       2
# 5  3       3       1
# 6  3       3       1

# Find the ones that are equal.
same.rating<-all.merged[all.merged\$rater_2==all.merged\$rater_1,]
# Consider id 44, sometimes they match twice.
# So remove duplicates.
same.rating<-same.rating[!duplicated(same.rating),]
# Find the ones that never matched.
not.same.rating<-all.merged[!(all.merged\$id %in% same.rating\$id),]
# Pick one. I chose to pick the maximum.
picked.rating<-aggregate(rater_2~id+rater_1,not.same.rating,max)
# Stick the two together.
result<-rbind(same.rating,picked.rating)
result<-result[order(result\$id),] # Sort

#     id rater_1 rater_2
# 27   1       2       5
# 4    2       2       2
# 33   3       3       1
# 44   4       5       3
# 281  5       2       4
# 11   6       5       5
``````

A fancy way to do this would be like this:

``````same.or.random<-function(x) {
matched<-which.min(x\$rater_1==x\$rater_2)
if(length(matched)>0) x[matched,]
else x[sample(1:nrow(x),1),]
}
do.call(rbind,by(merge(df1,df2),id,same.or.random))
``````
-
If you like it, you can check the arrow to accept the answer. –  nograpes May 21 '13 at 19:28
Thanks for providing even two ways of approaching this. For now, I will try to understand the first version... :) What I don't understand is the line with the aggregate function. What does rater_2~id+rater_1 mean? I tried to look it up, but I couldn't find the answer. –  nantoku May 21 '13 at 19:38
Look at the examples in `?aggregate`, specifically at the ones under `## Formulas...`. Essentially, this means, for every combination of `id` and `rater_1` in `not.same.rating`, find the `max` value of `rater_2`. –  nograpes May 21 '13 at 19:49
Ok, now I got it. Thanks a lot! –  nantoku May 21 '13 at 20:16