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I want to look at a number of columns for each response, and if only one of those columns contains a specific string then put that column name into a new column.

Example dataframe:

data <- structure(list(ParticipantID = 1:5, Usual = c("Pear", "Pear", 
"Apple", NA, NA), Pear_Freq = c("3 or more times a week", "3 or more times a week", 
"Once a week", "Once a week", "3 or more times a week"), Apple_Freq = c("Never", 
"Once a week", "3 or more times a week", "Never", "3 or more times a week"
), Peach_Freq = c("Once a week", "Never", "Never", "3 or more times a week", 
"Once a week")), .Names = c("ParticipantID", "Usual", "Pear_Freq", 
"Apple_Freq", "Peach_Freq"), class = "data.frame", row.names = c(NA, 
-5L))

So what I would be hoping to get out of it would a new column containing:

ParticipantID   Newcol
1               Pear
2               Pear
3               Apple
4               Peach
5               NA

(As a way of checking if what people said and did matches up, and to fill in blanks in the 'usual' column)

So far, I have some code which puts a count into a new column, so that I can select people who only ticked 3 or more times a week in one column (not 2, or 0):

test$tempcol <- NA
test$tempcol <- apply(test[,Freqcols], 1, function(x) sum(grepl("3 or more times a week", x)))

(I feel like I don't need to use grepl for this, since I'm looking to match the whole cell not a pattern, really)

And then I was trying to use which to get the index of the columns for each respondent which contains "3 or more times a week" something like this:

which(apply(test, 1, function(x) any(grepl("3 or more times a week", x))))

But of course, that just tells me that everyone said 3 or more times a week for at least one column.

And then I was hoping to use that to paste the Fruit bit of the column title into a new cell, but I'm a bit lost on how to actually get to that bit :( any suggestions would be very appreciated.

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1 Answer 1

up vote 1 down vote accepted

You could try this:

data$newcol <- apply(data[3:5], 1, function(x) 
   ifelse(length(which(x == "3 or more times a week")) != 1, NA,
   unlist(strsplit(names(data[3:5])[which(x == "3 or more times a week")], "_")))[1])

#  ParticipantID Usual              Pear_Freq             Apple_Freq             Peach_Freq newcol
#1             1  Pear 3 or more times a week                  Never            Once a week   Pear
#2             2  Pear 3 or more times a week            Once a week                  Never   Pear
#3             3 Apple            Once a week 3 or more times a week                  Never  Apple
#4             4  <NA>            Once a week                  Never 3 or more times a week  Peach
#5             5  <NA> 3 or more times a week 3 or more times a week            Once a week   <NA>

You would start checking the frequency of the response being "3 or more times a week" with which and if it occurs more or less than once, you would return NA. If it occurs only once, which will tell you the index of the columns where it occurs and you use names(data[3:5]) to find out the matching column names. To get only the fruit bit of the name you split it by "_", unlist the resulting list and use the first bit of it only to write into the new column.

share|improve this answer
    
Perfect, thank you so so much! –  Froom2 May 30 '14 at 12:27
    
How can I modify this to work if "3 or more times a week" doesn't occur in a row? Do I need to nest another ifelse? –  Froom2 May 30 '14 at 12:51
1  
Just change the >1 in the ifelse to !=1. Does that work? –  docendo discimus May 30 '14 at 12:53
    
o.O yes it does! OH I UNDERSTAND!! I'm so sorry, I had it round the wrong way in my head :) Thank you so much for your help! –  Froom2 May 30 '14 at 12:59

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