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I have a data.frame with 1,000 rows and 3 columns. It contains a large number of duplicates and I've used plyr to combine the duplicate rows and add a count for each combination as explained in this thread.

Here's an example of what I have now (I still also have the original data.frame with all of the duplicates if I need to start from there):

   name1    name2    name3     total
1  Bob      Fred     Sam       30
2  Bob      Joe      Frank     20
3  Frank    Sam      Tom       25
4  Sam      Tom      Frank     10
5  Fred     Bob      Sam       15

However, column order doesn't matter. I just want to know how many rows have the same three entries, in any order. How can I combine the rows that contain the same entries, ignoring order? In this example I would want to combine rows 1 and 5, and rows 3 and 4.

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2 Answers 2

up vote 3 down vote accepted

Define another column that's a "sorted paste" of the names, which would have the same value of "Bob~Fred~Sam" for rows 1 and 5. Then aggregate based on that.

Brief code snippet (assumes original data frame is dd): it's all really intuitive. We create a lookup column (take a look and should be self explanatory), get the sums of the total column for each combination, and then filter down to the unique combinations...

dd$lookup=apply(dd[,c("name1","name2","name3")],1,
                                  function(x){paste(sort(x),collapse="~")})
tab1=tapply(dd$total,dd$lookup,sum)
ee=dd[match(unique(dd$lookup),dd$lookup),]
ee$newtotal=as.numeric(tab1)[match(ee$lookup,names(tab1))]

You now have in ee a set of unique rows and their corresponding total counts. Easy - and no external packages needed. And crucially, you can see at every stage of the process what is going on!

(Minor update to help OP:) And if you want a cleaned-up version of the final answer:

outdf = with(ee,data.frame(name1,name2,name3,
                           total=newtotal,stringsAsFactors=FALSE))

This gives you a neat data frame with the three all-important name columns, and with the aggregated totals in a column called total rather than newtotal.

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This also worked (after I removed spaces from data.frame entries). It also eliminates the step of manually copy/pasting data. However, it leaves me with: ` name1 name2 name3 total lookup newtotal` 1 Bob Fred Sam 30 Bob~Fred~Sam 45 2 Bob Joe Frank 20 Bob~Frank~Joe 20 3 Frank Sam Tom 25 Frank~Sam~Tom 35` –  jdfinch3 Jun 9 '12 at 18:39
    
Hmmm, can't get code block to work in comments... however, ee displays the merged results without the updated totals and then beside it the merged results with the updated totals (and with ~ replacing the tabs between row entries). I'm sure this is an easy fix, but I don't know R well enough (yet) to easily fix it... –  jdfinch3 Jun 9 '12 at 18:45
    
Ok, I actually took the time to read through your code and think each action through and realized that the answer to my question was even more obvious than I had thought. I just took the two new columns and inserted them into a new data.frame (and replaced the "~" with " " just to make it easier to read). Thanks! –  jdfinch3 Jun 9 '12 at 22:16
    
The only downside to this solution is that now instead of three separate columns in the data.frame, all 3 elements are combined into 1 string - that might create problems down the road... –  jdfinch3 Jun 9 '12 at 22:20
1  
Perfect! Thanks for the update - this is exactly what I need. Also, thank you for the tip about list.files in the other comment - I was unaware of it. –  jdfinch3 Jun 10 '12 at 2:33

Sort the index columns, then use ddply to aggregate and sum:

Define the data:

dat <- "   name1    name2    name3     total
1  Bob      Fred     Sam       30
2  Bob      Joe      Frank     20
3  Frank    Sam      Tom       25
4  Sam      Tom      Frank     10
5  Fred     Bob      Sam       15"

x <- read.table(text=dat, header=TRUE)

Create a copy:

xx <- x

Use apply to sort the columns, then aggregate:

xx[, -4] <- t(apply(xx[, -4], 1, sort))
library(plyr)
ddply(xx, .(name1, name2, name3), numcolwise(sum))
  name1 name2 name3 total
1   Bob Frank   Joe    20
2   Bob  Fred   Sam    45
3 Frank   Sam   Tom    35
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Hasn't doing it this way changed the original data? The first line used to say "Bob, Fred, Sam"...? –  Tim P Jun 9 '12 at 13:18
1  
@timp Yes, but since the OP said the order doesn't matter, that probably doesn't matter. Anyway, the original data is still in x. That's why I created a new object xx. But the reason why the row order is different is because ddply sorts the grouping variables before doing the aggregation. –  Andrie Jun 9 '12 at 13:20
1  
Eek! That's why I tend to steer away from these new-fangled packages - I always find you really have to know them inside out otherwise you can easily get burned. Then again, I suppose sometimes you wouldn't mind your rows being reordered (though that'd be a nightmare for the kind of things I use R for). Thanks for the tips though :) –  Tim P Jun 9 '12 at 16:16
3  
@timp whatever. –  Andrie Jun 9 '12 at 16:42
2  
This worked perfectly - thanks! Just had to remove the spaces from my data.frame entries (my fault for not giving a proper data example). Andrie is correct - for this particular set of data the order of the content of each row does not matter, I just need to know which rows have the same 3 entries - so 1,2,3 , 1,3,2 , 3,1,2 , 3,2,1 , 2,1,3 , and 2,3,1 are all the same. I do realize that this isn't a normal way to organize data - just happens to be what is needed in this case. –  jdfinch3 Jun 9 '12 at 18:12

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