# Replacing NAs with latest non-NA value

In a data.frame (or data.table), I would like to "fill forward" NAs with the closest previous non-NA value. A simple example, using vectors (instead of a `data.frame`) is the following:

``````> y <- c(NA, 2, 2, NA, NA, 3, NA, 4, NA, NA)
``````

I would like a function `fill.NAs()` that allows me to construct `yy` such that:

``````> yy
[1] NA NA NA  2  2  2  2  3  3  3  4  4
``````

I need to repeat this operation for many (total ~1 Tb) small sized `data.frame`s (~30-50 Mb), where a row is NA is all its entries are. What is a good way to approach the problem?

The ugly solution I cooked up uses this function:

``````last <- function (x){
x[length(x)]
}

fill.NAs <- function(isNA){
if (isNA[1] == 1) {
isNA[1:max({which(isNA==0)[1]-1},1)] <- 0 # first is NAs
# can't be forward filled
}
isNA.neg <- isNA.pos <- isNA.diff <- diff(isNA)
isNA.pos[isNA.diff < 0] <- 0
isNA.neg[isNA.diff > 0] <- 0
which.isNA.neg <- which(as.logical(isNA.neg))
if (length(which.isNA.neg)==0) return(NULL) # generates warnings later, but works
which.isNA.pos <- which(as.logical(isNA.pos))
which.isNA <- which(as.logical(isNA))
if (length(which.isNA.neg)==length(which.isNA.pos)){
replacement <- rep(which.isNA.pos[2:length(which.isNA.neg)],
which.isNA.neg[2:max(length(which.isNA.neg)-1,2)] -
which.isNA.pos[1:max(length(which.isNA.neg)-1,1)])
replacement <- c(replacement, rep(last(which.isNA.pos), last(which.isNA) - last(which.isNA.pos)))
} else {
replacement <- rep(which.isNA.pos[1:length(which.isNA.neg)], which.isNA.neg - which.isNA.pos[1:length(which.isNA.neg)])
replacement <- c(replacement, rep(last(which.isNA.pos), last(which.isNA) - last(which.isNA.pos)))
}
replacement
}
``````

The function `fill.NAs` is used as follows:

``````y <- c(NA, 2, 2, NA, NA, 3, NA, 4, NA, NA)
isNA <- as.numeric(is.na(y))
replacement <- fill.NAs(isNA)
if (length(replacement)){
which.isNA <- which(as.logical(isNA))
to.replace <- which.isNA[which(isNA==0)[1]:length(which.isNA)]
y[to.replace] <- y[replacement]
}
``````

Output

``````> y
[1] NA  2  2  2  2  3  3  3  4  4  4
``````

... which seems to work. But, man, is it ugly! Any suggestions?

-
From other questions since this one, I think you've now found `roll=TRUE` in `data.table`. – Matt Dowle Oct 26 '11 at 14:16
A new method is being introduced as `fill` in `R` – Saksham Sep 20 '15 at 6:44
Also, look into `tidyr::fill()`. – zx8754 May 2 at 7:30

You probably want to use the `na.locf()` function from the zoo package to carry the last observation forward to replace your NA values.

Here is the beginning of its usage example from the help page:

``````> example(na.locf)

na.lcf> az <- zoo(1:6)

na.lcf> bz <- zoo(c(2,NA,1,4,5,2))

na.lcf> na.locf(bz)
1 2 3 4 5 6
2 2 1 4 5 2

na.lcf> na.locf(bz, fromLast = TRUE)
1 2 3 4 5 6
2 1 1 4 5 2

na.lcf> cz <- zoo(c(NA,9,3,2,3,2))

na.lcf> na.locf(cz)
2 3 4 5 6
9 3 2 3 2
``````
-

Sorry for digging up an old question. I couldn't look up the function to do this job on the train, so I wrote one myself.

I was proud to find out that it's a tiny bit faster.
It's less flexible though.

But it plays nice with `ave`, which is what I needed.

``````repeat.before = function(x) {   # repeats the last non NA value. Keeps leading NA
ind = which(!is.na(x))      # get positions of nonmissing values
if(is.na(x[1]))             # if it begins with a missing, add the
ind = c(1,ind)        # first position to the indices
rep(x[ind], times = diff(   # repeat the values at these indices
c(ind, length(x) + 1) )) # diffing the indices + length yields how often
}                               # they need to be repeated

x = c(NA,NA,'a',NA,NA,NA,NA,NA,NA,NA,NA,'b','c','d',NA,NA,NA,NA,NA,'e')
xx = rep(x, 1000000)
system.time({ yzoo = na.locf(xx,na.rm=F)})
## user  system elapsed
## 2.754   0.667   3.406
system.time({ yrep = repeat.before(xx)})
## user  system elapsed
## 0.597   0.199   0.793
``````
-
+1 for not needing another package – petermeissner Oct 3 '13 at 19:25
+1, but I am guessing this needs to be looped per column if you want to apply this to a `df` with multiple columns? – Zhubarb Oct 6 '14 at 16:11
@Zhubarb Yes, try using `plyr::colwise`. – Ruben Oct 7 '14 at 16:34

Dealing with a big data volume, in order to be more efficient, we can use the data.table package.

``````require(data.table)
replaceNaWithLatest <- function(
dfIn,
nameColNa = names(dfIn)[1]
){
dtTest <- data.table(dfIn)
setnames(dtTest, nameColNa, "colNa")
dtTest[, segment := cumsum(!is.na(colNa))]
dtTest[, colNa := colNa[1], by = "segment"]
dtTest[, segment := NULL]
setnames(dtTest, "colNa", nameColNa)
return(dtTest)
}
``````
-

Try this function. It does not require the ZOO package:

``````# last observation moved forward
# replaces all NA values with last non-NA values
na.lomf <- function(x) {

na.lomf.0 <- function(x) {
non.na.idx <- which(!is.na(x))
if (is.na(x[1L])) {
non.na.idx <- c(1L, non.na.idx)
}
rep.int(x[non.na.idx], diff(c(non.na.idx, length(x) + 1L)))
}

dim.len <- length(dim(x))

if (dim.len == 0L) {
na.lomf.0(x)
} else {
apply(x, dim.len, na.lomf.0)
}
}
``````

Example:

``````> # vector
> na.lomf(c(1, NA,2, NA, NA))
[1] 1 1 2 2 2
>
> # matrix
> na.lomf(matrix(c(1, NA, NA, 2, NA, NA), ncol = 2))
[,1] [,2]
[1,]    1    2
[2,]    1    2
[3,]    1    2
``````
-

This has worked for me:

``````  replace_na_with_last<-function(x,a=!is.na(x)){
x[which(a)[c(1,1:sum(a))][cumsum(a)+1]]
}

> replace_na_with_last(c(1,NA,NA,NA,3,4,5,NA,5,5,5,NA,NA,NA))

[1] 1 1 1 1 3 4 5 5 5 5 5 5 5 5

> replace_na_with_last(c(NA,"aa",NA,"ccc",NA))

[1] "aa"  "aa"  "aa"  "ccc" "ccc"
``````

speed is reasonable too:

``````> system.time(replace_na_with_last(sample(c(1,2,3,NA),1e6,replace=TRUE)))

user  system elapsed

0.072   0.000   0.071
``````
-