1

I have a data.frame that looks like this

dput(repex) = structure(list(cat = structure(c(1L, 1L, 1L, 1L, 1L, 1L, 1L, 
1L, 1L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 3L, 3L, 3L), .Label = c("x", 
"y", "z"), class = "factor"), year = c(1980, 1980, 1982, 1982, 
1990, 1991, 1991, 1991, 1993, 1981, 1981, 1983, 1990, 1996, 1996, 
1996, 1996, 1999, 2002, 1994), org = structure(c(2L, 3L, 4L, 
2L, 5L, 6L, 7L, 8L, 9L, 2L, 3L, 5L, 3L, 10L, 11L, 4L, 9L, 10L, 
3L, 9L), .Label = c("709340", "a", "b", "c", "d", "f", "j", "k", 
"e", "h", "m"), class = "factor")), .Names = c("cat", "year", 
"org"), row.names = c(NA, 20L), class = "data.frame")

I want to create a new object (ideally a data.table or data.frame) in which the elements of org are grouped horizontally behind a specific cat, year combination

I tried to run the following:

repex <- data.table(repex)
setkey(repex,cat,year)
repex[, list(org), by="cat,year"]  #OR
repex[, paste(org,sep="_"), by="cat,year"] # OR
with(repex, tapply(org,paste(cat,year,sep="_"),paste))

The first two data.table options merely copy the entire data.table and the tapply option (applied to repex as either data.table or data.frame) works for a small dataset but creates a list object which is not really convenient as I would need to add the output to another data.frame that is based on the cat_year combination... Additionally for a long dataset (nrow > 100,000) it takes forever, especially as in some cases it needs to paste > 100 org-variants.

My desired output would be a data.table that looks something like this

x 1980 a b
x 1982 a c # org would ideally be rearranged
x 1990 d
x 1991 f j k 
...
y 1996 c e h m
...
z 2002 b
4

One of your actual problems is using the incorrect arguments to paste. You are looking for collapse, not sep. Another problem is using "data.table" syntax incorrectly.


Update

Considering the comments to this answer, I would suggest something like this instead:

library(data.table)
library(reshape2)
DT <- as.data.table(repex)

setkey(DT, cat, year, org) ## Sorts everything

## Creates a column "var" with the sequence of values ("V1", "V2", and so on)
DT[, var := paste("V", sequence(.N), sep = ""), by = list(cat, year)]
head(DT)
#    cat year org var
# 1:   x 1980   a  V1
# 2:   x 1980   b  V2
# 3:   x 1982   a  V1
# 4:   x 1982   c  V2
# 5:   x 1990   d  V1
# 6:   x 1991   f  V1

Converts that to a "wide" format:

dcast.data.table(DT, cat + year ~ var, value.var="org")
#     cat year V1 V2 V3 V4
#  1:   x 1980  a  b NA NA
#  2:   x 1982  a  c NA NA
#  3:   x 1990  d NA NA NA
#  4:   x 1991  f  j  k NA
#  5:   x 1993  e NA NA NA
#  6:   y 1981  a  b NA NA
#  7:   y 1983  d NA NA NA
#  8:   y 1990  b NA NA NA
#  9:   y 1996  c  e  h  m
# 10:   z 1994  e NA NA NA
# 11:   z 1999  h NA NA NA
# 12:   z 2002  b NA NA NA

Original answer

This is a pretty straightforward aggregate problem:

aggregate(org ~ cat + year, repex, function(x) paste(sort(x), collapse = " "))
#    cat year     org
# 1    x 1980     a b
# 2    y 1981     a b
# 3    x 1982     a c
# 4    y 1983       d
# 5    x 1990       d
# 6    y 1990       b
# 7    x 1991   f j k
# 8    x 1993       e
# 9    z 1994       e
# 10   y 1996 c e h m
# 11   z 1999       h
# 12   z 2002       b

A "data.table" approach:

library(data.table)
DT <- as.data.table(repex)
DT[, list(org = paste(sort(org), collapse = " ")), by = list(cat, year)]

And, to round things out, a "dplyr" approach:

library(dplyr)
repex %.% group_by(cat, year) %.% summarise(org = paste(sort(org), collapse = " "))
  • Hi, thanks for your useful replies. I managed to design a way less elegant solution myself in the meanwhile. So I'll be using your aggregate or data.table one (the dplyr syntax is too scary :). However, is there a way of changing the collapse command so that the different org end up in different matrix cells? So for x 1980 org1 would be a and org2 (another column) would be b ... – SJDS May 7 '14 at 20:45
  • @Arun, I checked with the example dataset and this creates a solution that is actually better than the one I had in mind as it orders the org in separate columns which is fantastic for later search purposes. Unfortunately, in my dataset with > 14,500 different org and > 40,000 different cat (short for categories) it creates data-handling problems as the resulting object > 2 GB. Is there a solution for this? – SJDS May 7 '14 at 21:29
  • @Arun I guess you are right. In the solution I proposed myself I avoid this. In my dataset the maximum width necessary is 464 (i.e. 464 organisations are active in the same category in a specific year). I can draw those 464 neatly into different cells and create a lot less NAs than in the dcast format. Nonetheless, a private column for each organization would make specific counts and forms of network analysis (e.g. how do activities of specific org in specific cat in year "t" influence other org in similar cat in year "t+1") easier to visualise! Thanks for your solution!!! – SJDS May 7 '14 at 21:38
  • Thanks both for your great suggestions. @Arun the total number of unique values is over 33,000 but per row there are no more than 464. @ AnandaMahto 's solution basically combines your suggestion with a less memory-intense approach. It's perfect! – SJDS May 8 '14 at 9:14
  • I just ran it on my entire dataset and it works a lot faster than the solution I proposed. The only downside is that the order of the columns in dcast is inconvenient as it goes V1 V100 V101... – SJDS May 8 '14 at 9:30
0

@Anandaaaaaaaaaaaaaaaa,

Here's my inelegant way of solving the problem myself. I am sure there is an easier way that takes your advice but just thought I'd share as well.

Step 1: Paste all the org into a list

tmp1 <- with(repex, tapply(org,paste(cat,year,sep="_"), paste))

Step 2: Find the longest length of the list (very inelegantly)

x<-as.vector(NA)
for (i in 1:length(fy_ids)) {
  x[i] <- length(fy_ids[[i]])
  }
max(x)

Step 3: Using the maximum for x, construct a data.frame in which each organization occurs in a new cell (with special thanks to @agstudy for a previous answer

tmp <- do.call(rbind,lapply(tmp1,
               function(y)
                 if(length(y)>0)c(y,rep(NA, max(x)-length(y)))
                             else c(y,rep(NA,max(x)))))

Step 4: Turn tmp into a data.frame

tmp <- data.frame(tmp)

I know it's pretty cumbersome but it has the advantage of making search for specific org a lot easier as each org appears in a different cell.

  • I wouldn't have downvoted this because it does attempt to answer the question (+1) even though it's presented more as a long comment. However, it's not an efficient approach. I've added an alternative to agstudy's answer at your other question that is more efficient (even if it may require more setup time with the code). Oh, and the name's Ananda :-) – A5C1D2H2I1M1N2O1R2T1 May 8 '14 at 2:25
  • Thanks @AnandaMahto for your great answer and for bearing with me while I altered my initial question. I appreciate your "no downvote" action as well :). – SJDS May 8 '14 at 9:09

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