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My data frame looks like this:

> df
  id u.1t u.2 v.1 v.2
1  A    1  NA   5  NA
2  A    2  NA   4   6
3  A    1   4   5  NA
4  B   10  13  40  NA
5  B   10  12  42  NA
6  B   10  NA  41  NA

and I would like to know the id-specific means of the u.* and the v.* columns respectively like this:

> mean
  id u.mean v.mean
1  A      2      5
2  B     11     41

this is the data


As is clear, by introducing NA's, the overall mean is unequal to the mean of the row- or column-means, which is the problem here.

I thought this to be a job for by, but it turns out I can't get by to do anything but columnwise operations?

Help is greatly appreciated--thanks

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I see you "unaccepted" my answer below. Is there something missing you still need answered? – seancarmody Nov 7 '12 at 11:13
no, everything is fine. I was wondering if my final comment would be more accepted, if the post was still "unanswered". Don't bother & thanks! – Jan Nov 13 '12 at 10:02

2 Answers 2

up vote 5 down vote accepted

If you want to use by, try something like this:

by(x, x$id, function(x) colMeans(x[,-1], na.rm=TRUE))

The output is a bit ugly. While you can tidy it up, I would use the plyr package:

ddply(x, .(id), function(x) colMeans(x[,-1], na.rm=TRUE))

This doesn't quite achieve what you are after, as it takes the average of each column: it doesn't combine the u.* and v.* columns. To do that, I would melt the data first and then use plyr:

y <- melt(x)
y$variable <- gsub("\\..*", '', y$variable)
#   id variable value
#1   A        u     1
#2   A        u     2
#3   A        u     1
#4   B        u    10
#5   B        u    10
#6   B        u    10
#7   A        u    NA
#    (etc)

z <- ddply(y, .(id, variable), summarise, mean = mean(value, na.rm=TRUE))
#  id variable mean
#1  A        u    2
#2  A        v    5
#3  B        u   11
#4  B        v   41

If you choose to, you can cast this back:

dcast(z, id~variable)
#  id  u  v
#1  A  2  5
#2  B 11 41    
share|improve this answer
melting...I like melting--thanks seancarmody – Jan Sep 19 '12 at 12:17

Sean got it right. His solution works perfect.

But, since pattern replacement in variable names often is inconvenient, not applicable (as is in my case--not the example), or simply not everyone's cup of tea, one might as well introduce a new factor to differentiate the u'sfrom the v's. cast gives the answer rightaway (no need for plyr):


y$x[y$variable %in% c("u.1t","u.2")]<-"u"
y$x[y$variable %in% c("v.1","v.2")]<-"v"
#   id variable value x
#1   A     u.1t     1 u
#2   A     u.1t     2 u
#3   A     u.1t     1 u
#4   B     u.1t    10 u
#5   B     u.1t    10 u
# ...
#22  B      v.2    NA v
#23  B      v.2    NA v
#24  B      v.2    NA v

dcast(y,y$id~x,mean, na.rm=T)
#  y$id  u  v
#1    A  2  5
#2    B 11 41

There is even no need to factor the newly created column y$x

> sapply(y, class)
        id    variable       value           x 
  "factor"    "factor"   "numeric" "character" 
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