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I am still relatively new to R, so apologies in advance if my question seems too basic.

My problem is as follows:

I have a data set containing several factor variables, which have the same categories. I need to find the category, which occurs most frequently for each observation across the factor variables. In case of ties an arbitrary value can be chosen, although it would be great if I can have more control over it.

My data set contains over a hundred factors. However, the structure is something like that:

id <- 1:3
var1 <- c("red","yellow","green")
var2 <- c("red","yellow","green")
var3 <- c("yellow","orange","green")
var4 <- c("orange","green","yellow")
df <- data.frame(cbind(id, var1, var2, var3, var4))


> df
  id   var1   var2   var3   var4
1  1    red    red yellow orange
2  2 yellow yellow orange  green
3  3  green  green  green yellow

The solution should be a variable within the data frame, for example var5, which contains the most frequent category for each row. It can be a factor or a numeric vector (in case the data need to be converted first to numeric vectors)

In this case, I would like to have this solution:

> df$var5
[1] "red"    "yellow" "green" 

Any advice will be much appreciated! Thanks in advance!

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1 Answer 1

up vote 8 down vote accepted

Something like :

apply(df,1,function(x) names(which.max(table(x))))
[1] "red"    "yellow" "green" 

In case there is a tie, which.max takes the first max value. From the which.max help page :

Determines the location, i.e., index of the (first) minimum or maximum of a numeric vector.

Ex :

var4 <- c("yellow","green","yellow")
df <- data.frame(cbind(id, var1, var2, var3, var4))

> df
  id   var1   var2   var3   var4
1  1    red    red yellow yellow
2  2 yellow yellow orange  green
3  3  green  green  green yellow

apply(df,1,function(x) names(which.max(table(x))))
[1] "red"    "yellow" "green" 
share|improve this answer
    
nice job, cleaner than mine. Hadn't realized I could skip all the conversions, unlisting, etc. –  Ben Bolker Nov 14 '13 at 16:36
    
Thank you very much for this solution. I just tried it on my own data and it works perfectly! Could you, please, just clarify for me, how does this method resolve ties? Thanks! –  ZMacarozzi Nov 14 '13 at 17:57
    
I edited my answer to illustrate case with a tie. It's a good habit to learn how to use the help pages. I'm glad my solution worked for you. –  Chargaff Nov 14 '13 at 18:14
    
Thank you so much - I really appreciate it. And yes, I agree with you on the value of help pages - I will make sure to check the help pages next time. –  ZMacarozzi Nov 14 '13 at 18:27

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