Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

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.frames (~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?

share|improve this question
1  
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
2  
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
up vote 51 down vote accepted

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 
share|improve this answer

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   
share|improve this answer
4  
+1 for not needing another package – petermeissner Oct 3 '13 at 19:25
1  
+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)
}
share|improve this answer

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
share|improve this answer

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 
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.