# Counting how many values but the most common one there is in a data.frame, with R

Sample datas :

``````    > ind1
Ind Gb19a Gb19b Gb24a Gb24b Gb28a Gb28b Gb11a Gb11b
1  9-2-J1-N3   378   386   246   248   360   372   162   261
2  9-2-J1-N3   380   386   246   248   360   372   187   261
14 9-2-J1-N3   380   386   246   248    NA    NA    NA    NA
15 9-2-J1-N3    NA   246   248   360   187    NA    NA    NA
16 9-2-J1-N3   380   386   380   386   378   386   380   386
17 9-2-J1-N3   380   386   246   248   360   372   187   261
19 9-2-J1-N3   360   372   360   372   360   372   360   372
20 9-2-J1-N3   187   261   187   261   162   261   187   261
21 9-2-J1-N3   380   386   240   246   360   372   187    NA

> class(ind1)
[1] "data.frame"
``````

So I need to count, for every columns, how many values but the most common one there is. Expected output would be :

Gb19a 3
Gb19b 3
Gb24a 5
ect...

I have a solution given by folks here from a previous question I asked, (thanks to them) that explicitly do calculation for every variable, but I don't think it's a workable solution for my situation.

`````` > table(ind1\$Gb19a)

187 360 378 380
1   1   1   5

counts1 <- as.data.frame(table(ind1\$Gb19a), stringsAsFactors = FALSE)
modal_value1 <- which.max(counts1\$Freq)
(sum(counts1\$Freq)-counts1\$Freq[modal_value1])
[1] 3
``````

How to apply this to entire data.frame ?

As always, thanx for any help !

-

You just say the word !
("How to apply this to entire data.frame?")

``````countValsButMostFreq <- function(values){
counts1 <- as.data.frame(table(values), stringsAsFactors = FALSE)
modal_value1 <- which.max(counts1\$Freq)
return (sum(counts1\$Freq)-counts1\$Freq[modal_value1])
}

ind1 <- rbind.data.frame(
c('9-2-J1-N3',   378,   386,   246,   248,   360,   372,   162,   261),
c('9-2-J1-N3',   380,   386,   246,   248,   360,   372,   187,   261),
c('9-2-J1-N3',   380,   386,   246,   248,    NA,    NA,    NA,    NA),
c('9-2-J1-N3',    NA,   246,   248,   360,   187,    NA,    NA,    NA),
c('9-2-J1-N3',   380,   386,   380,   386,   378,   386,   380,   386),
c('9-2-J1-N3',   380,   386,   246,   248,   360,   372,   187,   261),
c('9-2-J1-N3',   360,   372,   360,   372,   360,   372,   360,   372),
c('9-2-J1-N3',   187,   261,   187,   261,   162,   261,   187,   261),
c('9-2-J1-N3',   380,   386,   240,   246,   360,   372,   187,    NA))
colnames(ind1) <- c('Ind', 'Gb19a', 'Gb19b', 'Gb24a', 'Gb24b', 'Gb28a', 'Gb28b', 'Gb11a', 'Gb11b')

res <- apply(X=ind1,MARGIN=2,FUN=countValsButMostFreq)
res
``````

Result:

``````  Ind Gb19a Gb19b Gb24a Gb24b Gb28a Gb28b Gb11a Gb11b
0     3     3     5     5     3     2     3     2
``````
-

Here is an example of doing this for `mtcars`:

``````as.data.frame(
lapply(mtcars,
function(x)unname(tail(sort(table(x)), 1))
)
)

mpg cyl disp hp drat wt qsec vs am gear carb
1   2  14    3  3    3  3    2 18 19   15   10
``````

How does this work?

Set up a function to get the frequency count for a single column:

• Use `table` to get your counts
• `Sort` the results
• Get the last value with `tail`
• Use `unname` to drop the name

Then simply pass that to `lapply` and convert the results to a `data.frame`

-
Mmh this returns the number of occurrences of the most frequent... you should do this: `sum(tail(sort(table(x),decreasing=T),-1))` –  digEmAll Feb 17 '12 at 18:15
@digEmAll Yeah the title of this post is misleading and I think that's why Andrie did this. –  Tyler Rinker Feb 17 '12 at 18:48
@TylerRinker: yes, the title is a little misleading; I confess I used the example provided to understand what to do. Anyway, the tail-sort approach is very smart :) –  digEmAll Feb 17 '12 at 18:54

You're looking for the apply family. I'd probably use sapply here but that's your choice.

``````   ind1 <- read.table(text="Ind Gb19a Gb19b Gb24a Gb24b Gb28a Gb28b Gb11a Gb11b
1  9-2-J1-N3   378   386   246   248   360   372   162   261
2  9-2-J1-N3   380   386   246   248   360   372   187   261
14 9-2-J1-N3   380   386   246   248    NA    NA    NA    NA
15 9-2-J1-N3    NA   246   248   360   187    NA    NA    NA
16 9-2-J1-N3   380   386   380   386   378   386   380   386
17 9-2-J1-N3   380   386   246   248   360   372   187   261
19 9-2-J1-N3   360   372   360   372   360   372   360   372
20 9-2-J1-N3   187   261   187   261   162   261   187   261
21 9-2-J1-N3   380   386   240   246   360   372   187    NA", header=TRUE)

hapax <- function(x) {x <- na.omit(x); length(setdiff(unique(x), x[duplicated(x)]))}
sapply(ind1, hapax)
``````
-

apply(mymatrix, 2, myfunc) runs myfunc(onecolumn) on each column matrix, or data frame.

myfunc would be the code you posted to calculate the sum, except ind1\$Gb19a is replaced with onecolumn.

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