# Ignoring values or NAs in the sample function

I have a matrix in R that I would like to take a single random sample from each row. Some of my data is in NA, but when taking the random sample I do not want the NA to be an option for the sampling. How would I accomplish this?

For example,

``````a <- matrix (c(rep(5, 10), rep(10, 10), rep(NA, 5)), ncol=5, nrow=5)
a
[,1] [,2] [,3] [,4] [,5]
[1,]    5    5   10   10   NA
[2,]    5    5   10   10   NA
[3,]    5    5   10   10   NA
[4,]    5    5   10   10   NA
[5,]    5    5   10   10   NA
``````

When I apply the sample function to this matrix to output another matrix I get

``````b <- matrix(apply(a, 1, sample, size=1), ncol=1)
b

[,1]
[1,]   NA
[2,]   NA
[3,]   10
[4,]   10
[5,]    5
``````

Instead I do not want the NA to be capable of being the output and want the output to be something like:

``````b
[,1]
[1,]   10
[2,]   10
[3,]   10
[4,]    5
[5,]   10
``````
-

There might be a better way but sample doesn't appear to have any parameters related to NAs so instead I just wrote an anonymous function to deal with the NAs.

``````apply(a, 1, function(x){sample(x[!is.na(x)], size = 1)})
``````

essentially does what you want. If you really want the matrix output you could do

``````b <- matrix(apply(a, 1, function(x){sample(x[!is.na(x)], size = 1)}), ncol = 1)
``````

Edit: You didn't ask for this but my proposed solution does fail in certain cases (mainly if a row contains ONLY NAs.

``````a <- matrix (c(rep(5, 10), rep(10, 10), rep(NA, 5)), ncol=5, nrow=5)
# My solution works fine with your example data
apply(a, 1, function(x){sample(x[!is.na(x)], size = 1)})

# What happens if a row contains only NAs
a[1,] <- NA

# Now it doesn't work
apply(a, 1, function(x){sample(x[!is.na(x)], size = 1)})

# We can rewrite the function to deal with that case
mysample <- function(x, ...){
if(all(is.na(x))){
return(NA)
}
return(sample(x[!is.na(x)], ...))
}

# Using the new function things work.
apply(a, 1, mysample, size = 1)
``````
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yes, I noticed that failure. I take the sample from this and use it to generate more replicates from which I take more samples. I made a work around but your solution is better than mine. –  Kevin Apr 2 '12 at 20:32

I think @Dason's solution works quite well, but you can also try this:

``````a <- matrix (c(rep(5, 10), rep(10, 10), rep(NA, 5)), ncol=5, nrow=5)
matrix(sample(na.omit(as.numeric(a)),ncol(a)))
[,1]
[1,]   10
[2,]    5
[3,]   10
[4,]   10
[5,]    5
``````

Even if there is a complete row with NA's or a complete column with NA'S, this solution can deal with perfectly, for instance:

``````set.seed(007)
a <- matrix(sample(1:100, 25), 5)
a[1,] <- NA
a[5,1] <- NA
a[,3] <- NA
a[5,5] <- NA
a[3,2] <- NA

matrix(sample(na.omit(as.numeric(a)),ncol(a)))
[,1]
[1,]   40
[2,]    1
[3,]   42
[4,]   26
[5,]   32
``````

I guess this is what you were looking for (at least this could be another approach).

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