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There are a lot of posts about replacing NA values. I am aware that one could replace NAs in the following table/frame with the following:

x[is.na(x)]<-0

But, what if I want to restrict it to only certain columns? Let's me show you an example.

First, let's start with a dataset.

set.seed(1234)
x <- data.frame(a=sample(c(1,2,NA), 10, replace=T),
                b=sample(c(1,2,NA), 10, replace=T), 
                c=sample(c(1:5,NA), 10, replace=T))

Which gives:

    a  b  c
1   1 NA  2
2   2  2  2
3   2  1  1
4   2 NA  1
5  NA  1  2
6   2 NA  5
7   1  1  4
8   1  1 NA
9   2  1  5
10  2  1  1

Ok, so I only want to restrict the replacement to columns 'a' and 'b'. My attempt was:

x[is.na(x), 1:2]<-0

and:

x[is.na(x[1:2])]<-0

Which does not work.

My data.table attempt, where y<-data.table(x), was obviously never going to work:

y[is.na(y[,list(a,b)]), ]

I want to pass columns inside the is.na argument but that obviously wouldn't work.

I would like to do this in a data.frame and a data.table. My end goal is to recode the 1:2 to 0:1 in 'a' and 'b' while keeping 'c' the way it is, since it is not a logical variable. I have a bunch of columns so I don't want to do it one by one. And, I'd just like to know how to do this.

Do you have any suggestions?

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up vote 31 down vote accepted

You can do:

x[, 1:2][is.na(x[, 1:2])] <- 0

or better (IMHO), use the variable names:

x[c("a", "b")][is.na(x[c("a", "b")])] <- 0

In both cases, 1:2 or c("a", "b") can be replaced by a pre-defined vector.

share|improve this answer
    
That does the job. What about if I want to search for '1'? I tried to change it around but I couldn't get it to work. – jnam27 Oct 15 '13 at 11:07
1  
Probably like this: x[, 1:2][x[, 1:2] == 1] <- 0 – flodel Oct 15 '13 at 11:08

This will work for your data.table version:

for (col in c("a", "b")) y[is.na(get(col)), (col) := 0]

Alternatively, as David Arenburg points out below, you can use set (side benefit - you can use it either on data.frame or data.table):

for (col in 1:2) set(x, which(is.na(x[[col]])), col, 0)
share|improve this answer
    
thanks for this. Just wanted to know, 3 years on, if there are ways to do the above without a for loop? I imagine this would have been made more concise by data.table team? Thanks. – info_seekeR Jan 14 at 13:18
1  
@info_seekeR I don't know of a more concise way – eddi Jan 14 at 15:43
    
y[ , (cols) := lapply(.SD, function(x){out <- x; out[is.na(out)] <- 0; out}), .SDcols = cols] "skips" the loop but is pretty ugly IMO. Just mentioning since it at least fits the "paradigm" of lapply/.SDcols updates for data.table. I guess we could also write na.to.0<-function(x){x[is.na(x)]<-0; x} then do y[ , (cols) := lapply(.SD, na.to.0), .SDcols = cols]... – MichaelChirico Jan 29 at 19:03

Not sure if this is more concise, but this function will also find and allow replacement of NAs (or any value you like) in selected columns of a data.table:

update.mat <- function(dt, cols, criteria) {
  require(data.table)
  x <- as.data.frame(which(criteria==TRUE, arr.ind = TRUE))
  y <- as.matrix(subset(x, x$col %in% which((names(dt) %in% cols), arr.ind = TRUE)))
  y
}

To apply it:

y[update.mat(y, c("a", "b"), is.na(y))] <- 0

The function creates a matrix of the selected columns and rows (cell coordinates) that meet the input criteria (in this case is.na == TRUE).

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