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I have a data frame with survey results that looks like this:

          Q1         Q2       Q3
1      Agree No opinion Disagree
2 No opinion No opinion Disagree
3      Agree            Disagree

How can I convert the survey responses into numbers so that I can get the mean response for each question? I can use gsub to substitute numeric values for each text answer in each column, but there must be a better way.

> str(x)
'data.frame':   3 obs. of  3 variables:
 $ Q1: Factor w/ 2 levels "Agree","No opinion": 1 2 1
 $ Q2: Factor w/ 2 levels "","No opinion": 2 2 1
 $ Q3: Factor w/ 1 level "Disagree": 1 1 1
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How 'bout sapply(data, as.integer) ? – Theodore Lytras Mar 12 '13 at 21:51
@TheodoreLytras That assumes a lot about the structure of their data. Factor vs character, and even if they are factors, we don't know the order of the levels. – joran Mar 12 '13 at 21:54
@outis why not to use table here? – agstudy Mar 12 '13 at 21:59
@agstudy Because apparently they think that if I Agree with something and you Disagree, as a group we have No Opinion. ;) – joran Mar 12 '13 at 22:02
Share your data via dput(head()) or show us the output of str(). – joran Mar 12 '13 at 22:03
up vote 3 down vote accepted

OK, it is clear now.

I would convert each column to character, then to factor (with common levels), then to integer:

sapply(data, function(x) as.integer(factor(as.character(x), levels=c("Agree", "No opinion", "Disagree"))))
share|improve this answer
alternatively, use an ordered factor – ndoogan Mar 12 '13 at 22:21

I must be misunderstanding what you want, but since you have categorical variables in a data.frame can't you just use summary on it?

q1 <- sample( c("Agree" , "No opinion" ) , 10 , replace = TRUE )
q2 <- sample( c(" " , "No opinion" ) , 10 , replace = TRUE )
q3 <- sample( c("Agree" , "Disagree" ) , 10 , replace = TRUE )

x <- data.frame( q1 , q2 , q3 )

  q1             q2           q3   
  Agree     :4   ,         :4   Agree   :5  
  No opinion:6   No opinion:6   Disagree:5  
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