How to compute conditional Mode in R?

I have a large data set with 11 columns and 100000 rows (for example) in which i have values 1,2,3,4. Where 4 is a missing value. What i need is to compute the Mode. I am using following data and function

``````ac<-matrix(c("4","4","4","4","4","4","4","3","3","4","4"), nrow=1, ncol=11)

m<-as.matrix(apply(ac, 1, Mode))
``````

if i use the above command then it will give me "4" as the Mode, which i do not need. I want that the Mode will omit 4 and display "3" as Mode, because 4 is a missing value.

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R has a powerful mechanism to work with missing values. You can represent a missing value with `NA` and many of the R functions have support for dealing with `NA` values.

Create a small matrix with random numbers:

``````set.seed(123)
m <- matrix(sample(1:4, 12, replace=TRUE), ncol=3)
m
[,1] [,2] [,3]
[1,]    2    4    3
[2,]    4    1    2
[3,]    2    3    4
[4,]    4    4    2
``````

Since you represent missingness by the value 4, you can replace each occurrence by `NA`:

``````m[m==4] <- NA
m

[,1] [,2] [,3]
[1,]    2   NA    3
[2,]   NA    1    2
[3,]    2    3   NA
[4,]   NA   NA    2
``````

To calculate, for example, the mean:

``````mean(m[1, ], na.rm=TRUE)
[1] 2.5

apply(m, 1, mean, na.rm=TRUE)
[1] 2.5 1.5 2.5 2.0
``````

To calculate the mode, you can use the function `Mode` in package `prettyR`: (Note that in this very small set of data, only the 4th row has a unique modal value:

``````apply(m, 1, Mode, na.rm=TRUE)
[1] ">1 mode" ">1 mode" ">1 mode" "2"
``````
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One way of doing it (though I'm not too sure on its performance):

``````tcnt<-table(ac, exclude="4")
actualmode<-names(tcnt)[which.max(tcnt)]
``````

This is code for looking for the overall mode, but it's easily adapted to look within rows. Or, based upon some answer to an old question on the R mailing list by Thomas Lumley, a oneliner:

``````names(sort(-table(ac, exclude="4")))[1]
``````
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