# Calculating moving majority in R

I´m trying to calculate moving majority values over an raster in R. The focal function in the raster package just provides mean, min and max. I have a raster with 3 values (1, 2 and 3) and I would like to have the value most abundant in a 3x3 window set in the center.

How can I do that most efficient in R? Thank you!

library(raster)

# create data
r <- raster(nrows = 120, ncol = 120, xmn=0)
r[] <- sample(3, ncell(r), replace=TRUE)
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You could do:

f <- function(x){
tab <- table(x)
# I am using the first value here, maybe you want to use the mean,
# if 2 or more values occur equally often.
names(tab)[which.max(tab)][1]
}

r <- raster(nrows = 120, ncol = 120, xmn=0)
r[] <- sample(3, ncell(r), replace=TRUE)

r <- focal(r, w=3, f)
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Good approach. I used table in a homebrew function to calculate the ensemble mode value(s). Naturally I can't find that code right now :-( –  Carl Witthoft Jun 19 '12 at 17:06
Thank you for your help! That worked perfectly. –  CWohlfart Jun 19 '12 at 17:18

Maybe I am little bit late, but it could be useful for futurs readers:

Now in R you can find focal function for majority (mode), so:

library(raster)

# create data
r <- raster(nrows = 120, ncol = 120, xmn=0)
r[] <- sample(3, ncell(r), replace=TRUE)

a<-focal(r, w=matrix(1,3,3), fun=modal)    # 3x3 moving window
plot(a)

(NOTE: make attention whenusing NA values - it worth better to convert them to integer number)

result:

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