3

I have this data sets

d1 = data.frame(PatID=c(1,1,1,2,2,4,1,2), 
                code1=c(1,2,3,1,2,7,2,8), 
                location=c('a','b','c','d','e','f','g','h'))

I want to eliminate duplicate rows (on PatID) so

  1. I get only one row for each unique PatID;
  2. merge values for code1 for all common rows,
  3. retain location for any one matching row (for first or last row - does not matter).

Output should be:

PatID    code1    location 
1        1,2,3    a 
2        1,2,8    d 
4        7        f 

I have tried unsuccessfully aggregate, ddply and even struggled with melt dcast. I am a former unix programmer but new to .

2 Answers 2

4

ddply works just fine:

ddply(d1,.(PatID),
      summarise,
      code1 = paste(unique(code1),collapse = ','),
      location = location[1])

  PatID code1 location
1     1 1,2,3        a
2     2 1,2,8        d
3     4     7        f

Oh fine. Here's the data.table version:

d2 <- as.data.table(d1)
> d2[,list(code1 = paste(unique(code1),collapse = ','),location = location[1]),by = 'PatID']
   PatID code1 location
1:     1 1,2,3        a
2:     2 1,2,8        d
3:     4     7        f
8
  • 1
    While you're at it, you should add the obligatory data.table approach too :) Jul 17, 2013 at 18:30
  • for data.table (and maybe plyr too, I don't know), keep it as a list, instead of pasting imo, i.e. ... code1 = list(unique(code1)) ...
    – eddi
    Jul 17, 2013 at 18:34
  • And base R's aggregate? C'mon? Where's the spirit in this answer? :) Oh fine. +1. Jul 17, 2013 at 18:36
  • @eddi, lists in data.frame/data.table columns seems to confuse some people, especially when they try to use write.csv with it. But for analysis, I totally agree with your comment. Jul 17, 2013 at 18:38
  • Wow!!! Jorans solution worked elegantly and perfectly. I was going to check back by evening, hoping I will have a response or two. Within seconds I have a solution. You all are awesome!!! Thanks so mcuh Joran and Ananda for lively interaction above as well. Jul 17, 2013 at 18:53
1

Just to make sure base R isn't entirely ignored (or to make you appreciate the syntax of "plyr" and "data.table" for these types of problems)...

Two options:

Option 1: Use ave to do the "aggregation" and unique to slim down the output

unique(within(d1, {
  code1 <- ave(code1, PatID, 
               FUN=function(x) paste(unique(x), collapse = ","))
  location <- ave(location, PatID, FUN=function(x) x[1])
}))
#   PatID code1 location
# 1     1 1,2,3        a
# 4     2 1,2,8        d
# 6     4     7        f

Option 2: Get aggregate and merge working together

merge(
  aggregate(code1 ~ PatID, d1, 
          function(x) paste(unique(x), collapse = ",")),
  aggregate(location ~ PatID, d1, function(x) x[1]))
#   PatID code1 location
# 1     1 1,2,3        a
# 2     2 1,2,8        d
# 3     4     7        f

The closest purely aggregate solution I can think of is as follows:

aggregate(cbind(code1, as.character(location)) ~ PatID, d1, 
          function(x) cbind(paste(unique(x), collapse = ","),
                            as.character(x[1])))
#   PatID code1.1 code1.2    V2.1 V2.2
# 1     1   1,2,3       1 a,b,c,g    a
# 2     2   1,2,8       1   d,e,h    d
# 3     4       7       7       f    f

It gives you all the information you were interested in, and a decent amount of information you weren't interested in too...

0

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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