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I'd like to show the names of columns in a large dataframe that contain missing values. Basically, I want the equivalent of complete.cases(df) but for columns, not rows. Some of the columns are non-numeric, so something like


returns "Error in colMeans(df) : 'x' must be numeric." So, my current solution is to transpose the dataframe and run complete.cases, but I'm guessing there's some variant of apply (or something in plyr) that's much more efficient.

nacols <- function(df) {

w <- c("hello","goodbye","stuff")
x <- c(1,2,3)
y <- c(1,NA,0)
z <- c(1,0, NA)
tmp <- data.frame(w,x,y,z)

[1] "y" "z"

Can someone show me a more efficient function to identify columns that have NAs?

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3 Answers 3

up vote 8 down vote accepted

This is the fastest way that I know of:

unlist(lapply(df, function(x) any(is.na(x))))


I guess everyone else wrote it out complete so here it is complete:

nacols <- function(df) {
    colnames(df)[unlist(lapply(df, function(x) any(is.na(x))))]

And if you microbenchmark the 4 solutions on a WIN 7 machine:

Unit: microseconds
    expr     min      lq  median      uq        max
1 ANDRIE  85.380  91.911 106.375 116.639    863.124
2 MANOEL  87.712  93.778 105.908 118.971   8426.886
3  MOIRA 764.215 798.273 817.402 876.188 143039.632
4  TYLER  51.321  57.853  62.518  72.316   1365.136

And here's a visual of that: enter image description here

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That works perfectly, thanks, especially for the benchmarks! –  Moira May 13 '12 at 19:51
+1 nice answer... –  Andrie May 13 '12 at 20:31

One way...

nacols <- function(x){
  y <- sapply(x, function(xx)any(is.na(xx)))

[1] "y" "z"

Explanation: since the result y is a logical vector, names(y[y]) returns the names of y for only those cases where y is TRUE.

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I'd be interested to know the reason for the downvote... –  Andrie May 13 '12 at 20:29
Andrie it was me. I meant to up vote everyone that gave a correct response but in my haste it was a down vote. I realized it later when I saw you had a 0 rather than a 2 but then my vote was locked. The only way to fix it (I think) is if you edit your response I can change the vote. –  Tyler Rinker May 14 '12 at 0:42
@TylerRinker Ah, ok. All is forgiven. I've made a minor edit... –  Andrie May 16 '12 at 11:34

Here is one way:

colnames(tmp)[colSums(is.na(tmp)) > 0]

Hope it helps,


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