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df1=data.frame(c("male","female","male"),c("1","2","3","4","5","6"),seq(141,170))
names(df1) = c("gender","age","height")
df1$age <- factor(df1$age,
levels=c(1,2,3,4,5,6),
labels=c("16-24","25-34","35-44","45-54","55-64","65+"))
q1a=c(1,0,1,0,0,1);q1b=c(0,0,2,2,2,0);q1c=c(0,0,3,3,0,3) #1,2 and 3 used to be compatible with existing datasets. Could change all to 1 if necessary.
df2=data.frame(q1a=q1a,q1b=q1b,q1c=q1c); df1 <- cbind(df1,df2)

rm(q1a,q1b,q1c,df2)

I am looking to replicate the analysis of multiple response questions from SPSS in R.

At the moment I am using this code:

#creating function for analysing questions with grouped data 
multfreqtable <- function(a, b, c){

# number of respondents (for percent of cases)
totrep=sum(a==1|b==2|c==3) 

#creating frequency table
table_a=data.frame("a",sum(a==1))
names(table_a)=c("question","freq")
table_b=data.frame("b",sum(b==2))
names(table_b)=c("question","freq") 
table_c=data.frame("c",sum(c==3))
names(table_c)=c("question","freq")
table_question <-rbind(table_a,table_b,table_c)

#remove individual question tables
rm(table_a,table_b,table_c)

#adding total
total=as.data.frame("Total")
totalsum=(sum(table_question$freq,na.rm=TRUE))
totalrow=cbind(total,totalsum)
names(totalrow)=c("question","freq")
table_question=rbind(table_question,totalrow)

#adding percentage column to frequency table
percentcalc=as.numeric(table_question$freq)
percent=(percentcalc/totalsum)*100
table_question<-cbind(table_question,percent)

#adding percent of cases column to frequency table
poccalc=as.numeric(table_question$freq)
percentofcases=(poccalc/totrep)*100
table_question<-cbind(table_question,percentofcases)

#print percent of cases value
total_respondents <<- data.frame(totrep)

#remove all unnecessary data and values
rm(total,totalsum,totalrow,b,c,percent,percentcalc,percentofcases,totrep,poccalc)

return(table_question)
}

#calling function - must tie to data.frame using $ !!!
q1_frequency<-multfreqtable(df1$q1a,df1$q1b,df1$q1c)

#renaming percent of cases - This is very important while using current method
total_respondents_q1 <- total_respondents
rm(total_respondents)

Producing this table as a result:

Output table

I am looking for a more efficient method of doing this that ideally would not require the function to be edited if there were more or less multiple choice questions.

share|improve this question
2  
This seems like a duplicate of your earlier question. What has changed? Please post your expected results, since I am not going to try and decipher your code again, but can most likely point you to an existing function once I know what you want. –  Andrie Feb 13 '12 at 18:23
    
@Andrie This is the same code as with my earlier post, it is only the focus of the question that has changed. The image above shows the output table from my code. Sorry if that is not the best way of demonstrating my expected results. –  BuckyOH Feb 14 '12 at 9:22
    
So you're trying to make this function more generic? –  Roman Luštrik Feb 14 '12 at 9:57
    
@RomanLuštrik. Yes, ideally I would like to specify a range of questions to analyse in this way. As mentioned if it is easier to use 1s for every question then that would be fine. –  BuckyOH Feb 14 '12 at 11:02

1 Answer 1

up vote 2 down vote accepted

Your function is actually far too complicated for what you need to do. I think a function like this should work and be more flexible.

multfreqtable = function(data, question.prefix) {
  # Find the columns with the questions
  a = grep(question.prefix, names(data))
  # Find the total number of responses
  b = sum(data[, a] != 0)
  # Find the totals for each question
  d = colSums(data[, a] != 0)
  # Find the number of respondents
  e = sum(rowSums(data[,a]) !=0)
  # d + b as a vector. This is your overfall frequency 
  f = as.numeric(c(d, b))
  data.frame(question = c(names(d), "Total"),
             freq = f,
             percent = (f/b)*100,
             percentofcases = (f/e)*100 )
}

Add another question to your example dataset:

set.seed(1); df1$q2a = sample(c(0, 1), 30, replace=T)
set.seed(2); df1$q2b = sample(c(0, 2), 30, replace=T)
set.seed(3); df1$q2c = sample(c(0, 3), 30, replace=T)

Make a table for "q1" responses:

> multfreqtable(df1, "q1")
  question freq   percent percentofcases
1      q1a   15  33.33333             60
2      q1b   15  33.33333             60
3      q1c   15  33.33333             60
4    Total   45 100.00000            180

Make a table for "q2" responses:

> multfreqtable(df1, "q2")
  question freq   percent percentofcases
1      q2a   14  31.11111       53.84615
2      q2b   13  28.88889       50.00000
3      q2c   18  40.00000       69.23077
4    Total   45 100.00000      173.07692

Tables for multiple questions

Here's a modified version of the function that allows you to create a list of tables for multiple questions at once:

multfreqtable = function(data, question.prefix) {
  z = length(question.prefix)
  temp = vector("list", z)

  for (i in 1:z) {
    a = grep(question.prefix[i], names(data))
    b = sum(data[, a] != 0)
    d = colSums(data[, a] != 0)
    e = sum(rowSums(data[,a]) !=0)
    f = as.numeric(c(d, b))
    temp[[i]] = data.frame(question = c(sub(question.prefix[i], 
                                            "", names(d)), "Total"),
                           freq = f,
                           percent = (f/b)*100,
                           percentofcases = (f/e)*100 )
    names(temp)[i] = question.prefix[i]
  }
  temp
}

Examples:

> multfreqtable(df1, "q1")
$q1
  question freq   percent percentofcases
1        a   15  33.33333             60
2        b   15  33.33333             60
3        c   15  33.33333             60
4    Total   45 100.00000            180

> test1 = multfreqtable(df1, c("q1", "q2"))
> test1
$q1
  question freq   percent percentofcases
1        a   15  33.33333             60
2        b   15  33.33333             60
3        c   15  33.33333             60
4    Total   45 100.00000            180

$q2
  question freq   percent percentofcases
1        a   14  31.11111       53.84615
2        b   13  28.88889       50.00000
3        c   18  40.00000       69.23077
4    Total   45 100.00000      173.07692

> test1$q1
  question freq   percent percentofcases
1        a   15  33.33333             60
2        b   15  33.33333             60
3        c   15  33.33333             60
4    Total   45 100.00000            180
share|improve this answer
    
Hello, this seems to do exactly what I want. Having the option of multiple outputs from the same command is also something that could come in very handy. –  BuckyOH Apr 23 '12 at 12:04
    
@BuckyO, good. Let me know if you run into any problems with the function. –  Ananda Mahto Apr 23 '12 at 12:23
    
Will do, thanks. I've tried it with zero responses and all answers coded as 1 which were two of the main things I had issues with and haven't seen any problems so far. –  BuckyOH Apr 23 '12 at 15:49
    
I've been trying to use adapt this code for a weighted data set and am having no luck. In my original code I achieved this by using xtabs instead of table. colSums seems to count the cases in each column regardless of their value. Is it possible to apply a weighting here? –  BuckyOH Apr 25 '12 at 9:43
    
@BuckyO, can you update your question with some example data and expected output, or if it seems to be different enough from this question, post a new question. The way colSums is being used here is to simply count the number of TRUE values for a given condition (in this case something being != 0 (not equal to zero)). If I understand how you want to deal with weighted data, I might be able to help. –  Ananda Mahto Apr 25 '12 at 10:04

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