Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a dataframe

df <- data.frame(
  id = c(1, 1, 1, 2, 2, 3, 3, 3, 3, 4), 
  date = c("1985-06-19", "1985-06-19", "1985-06-19", "1985-08-01", 
           "1985-08-01", "1990-06-19", "1990-06-19", "1990-06-19", 
           "1990-06-19", "2000-05-12"), 
  spp = c("a", "b", "c", "c", "d", "b", "c", "d", "a", "b"),
  y = rpois(10, 5))

   id       date spp y
1   1 1985-06-19   a 6
2   1 1985-06-19   b 3
3   1 1985-06-19   c 7
4   2 1985-08-01   c 7
5   2 1985-08-01   d 6
6   3 1990-06-19   b 5
7   3 1990-06-19   c 4
8   3 1990-06-19   d 4
9   3 1990-06-19   a 6
10  4 2000-05-12   b 6

I want to expand it so that there is every combination of id and spp and have y = 0 for every combination that is not currently in the dataframe. The dataframe is currently about 100,000 rows and 15 columns. When expanded it would be about 300,000 columns (there are 17 unique values of spp in my actual dataset).

For every value of id the date is the same (e.g. when id = 2, date always = 1985-08-01). In my real dataset all the columns except spp and y can be specified by the id.

I want to end up with something like:

   id       date spp y
   1 1985-06-19   a 6
   1 1985-06-19   b 3
   1 1985-06-19   c 7
   1 1985-06-19   d 0*
   2 1985-08-01   a 0*
   2 1985-08-01   b 0*
   2 1985-08-01   c 7
   2 1985-08-01   d 6
   3 1990-06-19   b 5
   3 1990-06-19   c 4
   3 1990-06-19   d 4
   3 1990-06-19   a 6
   4 2000-05-12   a 0*
   4 2000-05-12   b 6
   4 2000-05-12   c 0*
   4 2000-05-12   d 0*
  • Indicate added rows

I will likely have to do this in the future with potentially much larger data frames, so a quick, efficient (time and memory) way to do this would be appreciated but any solution would satisfy me. I figure there should be ways to use the dplyr, data.table, or reshape packages but I'm not very familiar with any of them. I'm not sure if it would be easiest to expand just rows id, spp, and y, then do a left_join() or merge() to recombine date (and all the other variables in my real dataframe) based on id?

share|improve this question

2 Answers 2

up vote 4 down vote accepted

expand.grid is a useful function here,

mergedData <- merge(
    expand.grid(id = unique(df$id), spp = unique(df$spp)),
    df, by = c("id", "spp"), all =T)

mergedData[is.na(mergedData$y), ]$y <- 0

mergedData$date <- rep(levels(df$date),
                       each = length(levels(df$spp)))

Since you're not actually doing anything to subsets of the data I don't think plyr will help, maybe more efficient ways with data.table.

share|improve this answer
    
+1 for expand.grid, never used before –  Ananta Feb 27 '14 at 5:46
1  
@Arun You're right, added a fix –  6pool Feb 27 '14 at 22:55

I would go the second way, hope this helps

x<-unique(df$id)
y<-unique(df$spp)
newdf<-data.frame(x=rep(x,each=length(y)),y=rep(y, length(x)))
merged<-merge(newdf, df, by.x=c(x,y), by.y=c("id","spp"), all=T)
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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