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My dataset contains two columns with data that are offset - something like:

col1<-c("a", "b", "c", "d", "ND", "ND", "ND", "ND")
col2<-c("ND", "ND", "ND", "ND", "e", "f", "g", "h")
dataset<-data.frame(cbind(col1, col2))

I would like to combine those two offset columns into a single column that contains the letters a through h and nothing else.

Something like the following is what I'm thinking, but rbind is not the right command:

dataset$combine<-rbind(dataset$col1[1:4], dataset$col2[5:8])
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6 Answers 6

up vote 2 down vote accepted

What about:

sel2 <- col2!="ND"
col1[sel2] <- col2[sel2]
> col1
[1] "a" "b" "c" "d" "e" "f" "g" "h"
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This is great Ari - thanks. The problem is that my actual dataset (this is obv. a sample) has missing data scattered throughout col1 and col2, so this code would eliminate those rows too, which I don't want to do - I want to keep all rows. Is there some way I could instead use the row numbers, as I attempted to do in the example using rbind? Thanks again. –  Luke Dec 10 '12 at 17:34
1  
@Luke, you may want to consider converting "ND" to actual NA values when reading your data into R. –  Ananda Mahto Dec 10 '12 at 17:59
    
Fundamentally you can achieve what you want by some combination of logical vectors. Look at help("&") and help("|"). And consider And consider @AnandaMahto's suggestion to use NA's, although then you have to use is.na rather than ==. –  Ari B. Friedman Dec 10 '12 at 19:42

Use sapply and an anonymous function:

dataset[sapply(dataset, function(x) x != "ND")]
# [1] "a" "b" "c" "d" "e" "f" "g" "h"
dataset$combine <- dataset[sapply(dataset, function(x) x != "ND")]
dataset
#   col1 col2 combine
# 1    a   ND       a
# 2    b   ND       b
# 3    c   ND       c
# 4    d   ND       d
# 5   ND    e       e
# 6   ND    f       f
# 7   ND    g       g
# 8   ND    h       h
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+1 this is clever. –  Matthew Plourde Dec 10 '12 at 18:19

Use grep to find the matching elements and select them:

c(col1[grep("^[a-h]$",col1)],col2[grep("^[a-h]$",col2)])
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Yet another way, using mapply and gsub:

 within(dataset, combine <- mapply(gsub, pattern='ND', replacement=col2, x=col1))
#   col1 col2 combine
# 1    a   ND       a
# 2    b   ND       b
# 3    c   ND       c
# 4    d   ND       d
# 5   ND    e       e
# 6   ND    f       f
# 7   ND    g       g
# 8   ND    h       h

Per your comment to @Andrie's answer, this will also preserve NA rows.

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Another point of view:

transform(dataset, 
          combine=dataset[apply(dataset, 2, function(x) x %in% letters[1:8])])
  col1 col2 combine
1    a   ND       a
2    b   ND       b
3    c   ND       c
4    d   ND       d
5   ND    e       e
6   ND    f       f
7   ND    g       g
8   ND    h       h

dataset$combine <- dataset[apply(dataset,2, function(x) nchar(x)==1)] #Also works
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Sometimes the problem is to think simple enough... ;-)

dataset$combine<-c(dataset$col1[1:4], dataset$col2[5:8])
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too simple - doesn't work ;) –  Luke Dec 10 '12 at 17:50
    
Strange, definately worked for me ... ? –  MortenSickel Dec 10 '12 at 17:53
    
@Morten His col1 and col2 are probably factors...and maybe you have options(stringsAsFactors=FALSE) set by default? –  Matthew Plourde Dec 10 '12 at 18:13

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