Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a problem where a vector has a bunch of NAs at the beginning, and data thereafter. However the peculiarity of my data is that the first n values that are non NA, are probably unreliable, so I would like to remove them and replace them with NA.

For example, if I have a vector of length 20, and non-NAs start at index position 4:

> z
 [1]          NA          NA          NA -1.64801942 -0.57209233  0.65137286  0.13324344 -2.28339326
 [9]  1.29968050  0.10420776  0.54140323  0.64418164 -1.00949072 -1.16504423  1.33588892  1.63253646
[17]  2.41181291  0.38499825 -0.04869589  0.04798073

I would like to remove the first 3 non-NA values, which I believe to be unreliable, to give this:

> z
 [1]          NA          NA          NA          NA          NA          NA  0.13324344 -2.28339326
 [9]  1.29968050  0.10420776  0.54140323  0.64418164 -1.00949072 -1.16504423  1.33588892  1.63253646
[17]  2.41181291  0.38499825 -0.04869589  0.04798073

Of course I need a general solution and I never know when the first non-NA value starts. How would I go about doing this? IE how do I find out the index position of the first non-NA value?

For completeness, my data is actually arranged in a data frame with lots of these vectors in columns, and each vector can have a different non-NA starting position. Also once the data starts, there may be sporadic NAs further down, which prevents me from simply counting their number, as a solution.

share|improve this question
1  
Is there an efficient way to do this that stops searching when it finds the first one? –  Alex Brown Jun 12 '13 at 16:59

3 Answers 3

up vote 21 down vote accepted

Use a combination of is.na and which to find the non-NA index locations.

NonNAindex <- which(!is.na(z))
firstNonNA <- min(NonNAindex)

# set the next 3 observations to NA
is.na(z) <- seq(firstNonNA, length.out=3)
share|improve this answer
    
Dang, this was my second guess. Wanted to be fancy with rle() but I like this solution better. –  Roman Luštrik Jul 24 '11 at 18:28
    
Perfect thanks. After some thought I came up with min((1:length(z))[!is.na(z)]), but of course this which idea is much better. Perfect –  Thomas Browne Jul 24 '11 at 19:43
    
Is firstNonNA <- NonNAindex[1] faster? Would I run into some problem with using [1] vs. min()? –  Florian Jenn Mar 11 '13 at 15:06
    
@FlorianJenn: yes, that would likely be faster, especially for larger vectors. I can't immediately think of a problem of using it over min. –  Joshua Ulrich Mar 12 '13 at 16:00
    
@JoshuaUlrich: Thanks! –  Florian Jenn Mar 12 '13 at 17:58

Similar idea to that of @Joshua, but using which.min()

## dummy data
set.seed(1)
dat <- runif(10)
dat[seq_len(sample(10, 1))] <- NA

## start of data
start <- which.min(is.na(dat))

which gives:

> (start <- which.min(is.na(dat)))
[1] 4

Use this to set start:(start+2) to NA

is.na(dat) <- seq(start, length.out = 3)

resulting in:

> dat
 [1]         NA         NA         NA         NA         NA
 [6]         NA 0.94467527 0.66079779 0.62911404 0.06178627
share|improve this answer
    
even cleaner. Thanks, and also for the continuation of the answer. –  Thomas Browne Jul 24 '11 at 19:43
2  
+1, but I'm not sure about cleaner. It's shorter but may be less clear to people who don't realize which.min coerces TRUE and FALSE to 1 and 0, respectively. –  Joshua Ulrich Jul 25 '11 at 2:45
1  
@Joshua agreed, it also relies on the behaviour that which.min returns the first of any tied minima. Not sure shorter deserves the accept. –  Gavin Simpson Jul 25 '11 at 6:43

I would do it something along the lines of

# generate some data
tb <- runif(10)
tb[1:3] <- NA

# I convert vector to TRUE/FALSE based on whether it's NA or not
# rle function will tell you when something "changes" in the vector
# (in our case from TRUE to FALSE)
tb.rle <- rle(is.na(tb))

# this is where vector goes from all TRUE to (at least one) FALSE
# your first true number is one position ahead, so +1
tb.rle$lengths[1] 

# you can now subset your vector with the first non-NA value
# and do with it whatever you want. I assign it a fantastic 
# non-believable number
tb[tb.rle$lengths[1] + 1] <- 42
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.