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'm new to R, and I was looking for similar questions, but was not able to find one to fix mine, any help would be appreciated.

I have a data frame M:

            date value
1 182-2002-01-01 23.95
2 182-2002-01-02 17.47
3 182-2002-01-03  NA
4 183-2002-01-01  NA
5 183-2002-01-02  5.50
6 183-2002-01-03 17.02

What I need to do is: if there are less than 5 NA (continuously), I will just repeat the previous number(17.47), and if there are more than 5 NA in a row, I will need to delete the whole month.

I tried function rle many times, but didn't work, many thanks for your help.

share|improve this question
    
Welcome to Stack Overflow! You will find that you get better answers if you take the time to make your question reproducible. Please follow the guidelines (stackoverflow.com/questions/5963269/…), paying special attention to the part about dput(). Thanks! –  Ari B. Friedman Jul 28 '12 at 2:45
add comment

2 Answers

up vote 2 down vote accepted

I'm going to adjust your question a little bit for the purposes of demonstration. I'm going to use a similar dataset to you, but for 2 NAs in a row. This generalises to 5 very easily, don't worry. I'm also going to use a data set that better demonstrates the solution

So first, how to get your data to look like what I'm going to use:

library(reshape)
M2<-data.frame(colsplit(M$date, "-", c("ID", "year", "month", "day")), 
               value=M$value)

Now that's out of the road, this is the data I'm going to work with:

library(reshape)
M2<-data.frame(colsplit(M$date, "-", c("ID", "year", "month", "day")), 
               value=M$value)

set.seed(1234)
M2<-expand.grid(ID=182, year=2002:2004, month=1:2, day=1:3, KEEP.OUT.ATTRS=FALSE)
M2 <- M2[with(M2, order(year, month, day, ID)),] #sort the data
M2$value <- sample(c(NA, rnorm(100)), nrow(M2), 
                   prob=c(0.5, rep(0.5/100, 100)), replace=TRUE)
M2

    ID year month day      value
1  182 2002     1   1 -0.5012581
7  182 2002     1   2  1.1022975
13 182 2002     1   3         NA
4  182 2002     2   1 -0.1623095
10 182 2002     2   2  1.1022975
16 182 2002     2   3 -1.2519859
2  182 2003     1   1         NA
8  182 2003     1   2         NA
14 182 2003     1   3         NA
5  182 2003     2   1  0.9729168
11 182 2003     2   2  0.9594941
17 182 2003     2   3         NA
3  182 2004     1   1         NA
9  182 2004     1   2 -1.1088896
15 182 2004     1   3  0.9594941
6  182 2004     2   1 -0.4027320
12 182 2004     2   2 -0.0151383
18 182 2004     2   3 -1.0686427

First, we're going to remove all cases where, within a month, there are 2 or more NAs in a row:

NA_run <- function(x, maxlen){
  runs <- rle(is.na(x$value))
  if(any(runs$lengths[runs$values] >= maxlen)) NULL else x
  }

library(plyr)
rem <- ddply(M2, .(ID, year, month), NA_run, 2)
rem

    ID year month day      value
1  182 2002     1   1 -0.5012581
2  182 2002     1   2  1.1022975
3  182 2002     1   3         NA
4  182 2002     2   1 -0.1623095
5  182 2002     2   2  1.1022975
6  182 2002     2   3 -1.2519859
7  182 2003     2   1  0.9729168
8  182 2003     2   2  0.9594941
9  182 2003     2   3         NA
10 182 2004     1   1         NA
11 182 2004     1   2 -1.1088896
12 182 2004     1   3  0.9594941
13 182 2004     2   1 -0.4027320
14 182 2004     2   2 -0.0151383
15 182 2004     2   3 -1.0686427

You can see that the two in a row NAs have been removed. The one remaining is there because it belongs to two different months. Now we're going to fill in the remaining NAs. The na.rm=FALSE argument is there to keep the NAs if they're right at the beginning (which is what you want, I think).

library(zoo)
rem$value <- na.locf(rem$value, na.rm=FALSE)
rem

    ID year month day      value
1  182 2002     1   1 -0.5012581
2  182 2002     1   2  1.1022975
3  182 2002     1   3  1.1022975
4  182 2002     2   1 -0.1623095
5  182 2002     2   2  1.1022975
6  182 2002     2   3 -1.2519859
7  182 2003     2   1  0.9729168
8  182 2003     2   2  0.9594941
9  182 2003     2   3  0.9594941
10 182 2004     1   1  0.9594941
11 182 2004     1   2 -1.1088896
12 182 2004     1   3  0.9594941
13 182 2004     2   1 -0.4027320
14 182 2004     2   2 -0.0151383
15 182 2004     2   3 -1.0686427

Now all you need to do to make this 5 or more with your data is to change the value of the maxlen argument in NA_run to 5.

EDIT: Alternatively, if you don't want values to copy over from previous months:

library(zoo)
rem$value <- ddply(rem, .(ID, year, month), summarise, 
                   value=na.locf(value, na.rm=FALSE))$value
rem

    ID year month day      value
1  182 2002     1   1 -0.5012581
2  182 2002     1   2  1.1022975
3  182 2002     1   3  1.1022975
4  182 2002     2   1 -0.1623095
5  182 2002     2   2  1.1022975
6  182 2002     2   3 -1.2519859
7  182 2003     2   1  0.9729168
8  182 2003     2   2  0.9594941
9  182 2003     2   3  0.9594941
10 182 2004     1   1         NA
11 182 2004     1   2 -1.1088896
12 182 2004     1   3  0.9594941
13 182 2004     2   1 -0.4027320
14 182 2004     2   2 -0.0151383
15 182 2004     2   3 -1.0686427
share|improve this answer
    
This works perfectly, thanks so so much! BTW, I have another condition say that if missing days are between 2-4 days, I need to do a linear interpolation, here is what I tried: NA_run <- function(x, maxlen){ runs <- rle(is.na(x$value)) miss <- runs$lengths[runs$values] ifelse(miss >= maxlen, NULL, ifelse((miss > maxlen-3)&(miss < maxlen), approx(x$value, n=length(x$value))$y, x)) } But get an error says:replacement has length zero –  Rosa Jul 30 '12 at 21:30
    
That's a different question altogether, but what I'd do is set na.locf's maximum NA fill to 1, then use rle to work out the indices of the remaining NA runs. Find the index before and after and the runs and do linear interpolation on those. –  sebastian-c Jul 31 '12 at 1:09
    
I was intended to try a simpler example, but seems made it more complex. :p What I need to do is say if there are less than 5 NA in a row, repeat the prior data, if 5 to 10 NA, do linear interpolation, but if more than 10 NA, delete the month. Your codes worked very well for those two parts, but I get confused to the comment, do you mean start all over again or just make change to NA_run? Thank you very much! –  Rosa Jul 31 '12 at 2:36
    
I suggest: 1. Use NA_run to remove all >10 NAs; 2. Use na.locf to fill down <5 in a row; 3. Use rle to find the largest runs of NAs. Find where they start and where they end. Extract those, perform linear interpolation, put them back in. –  sebastian-c Jul 31 '12 at 4:31
    
I figured it out, thanks! –  Rosa Jul 31 '12 at 5:25
show 6 more comments

I'd do this in two steps:

  1. An rle, rollapply, or shift-based strategy to fill in the small gaps (fewer than 5 NAs in a row).
  2. A by, aggregate, or ddply-based strategy to take any month with NAs remaining after step 1 and make the whole month NA.
share|improve this answer
    
Thanks for the edit and suggestions, :) –  Rosa Jul 30 '12 at 21:32
add comment

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.