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I have a data frame and I want to reshape it so that I only have one row for each observation obs. Here is the example data:

data <- data.frame("obs" = c('1','1','1','2','2'),
                   "value1" = c(1,NA,NA,NA,NA),
                   "value2" = c(NA,NA,3,1,NA),
                   "value3" = c(NA,2,NA,NA,5))

data looks like this:

  obs value1 value2 value3
   1      1     NA     NA
   1     NA     NA      2
   1     NA      3     NA
   2     NA      1     NA
   2     NA     NA      5

and I want to reshape it into:

obs  value1  value2  value3
1       1      3       2
2       NA     1       5


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Can you be sure you will never have two rows with the same obs and an entry for a given value column? If so, joran's answer is great. Otherwise, you'll have to decide how you want to handle them if you want only one row per obs value. –  Justin Jun 19 '13 at 18:37
You're right. Now that I used Joran's code I found that for some obs codes I have additional entries for values. In this case how can I get mean of those values to have only one row per obs? –  N16 Jun 19 '13 at 19:09
You'd modify the second line (else statement) of his function to return the mean(x[!is.na(x)]) instead. –  Justin Jun 19 '13 at 19:14
@Justin Thanks that worked! –  N16 Jun 19 '13 at 19:30

3 Answers 3

up vote 2 down vote accepted

This is how I would do this, using plyr:

foo <- function(x){
    if (all(is.na(x))) return(NA)
    else return(x[!is.na(x)])


And this of course assumes that you really do only have at most one non-NA value in each column for each value of obs.

If this isn't the case, and you want to take the mean of multiple values, you might try doing as Justin suggested:

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dt = data.table(dat)

dt[, lapply(.SD, function(x) x[!is.na(x)]), by = obs]

If you have multiple entries per value for a given observation, this will use R's recycling logic to fill the rest.

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A base solution:

out <- lapply(split(data, data$obs), function(x) {
    ans <- lapply(x[, -1], na.omit)
    data.frame(obs = x[1, 1], t(sapply(ans, "[", 1)))

do.call(rbind, out)

## > do.call(rbind, out)
##   obs value1 value2 value3
## 1   1      1      3      2
## 2   2     NA      1      5
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