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I have a 721 x 26 dataframe. Some rows have entries that are blank. It's not NULL or NA but just empty like the following. How can I delete those rows that have these kind of entries?

1         Y    N        Y          N            86.8
2         N    N        Y          N            50.0
3                                               76.8
4         N    N        Y          N            46.6
5         Y    Y        Y          Y            30.0
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Have you tried == "" for matching the blanks? –  Gregor Jul 16 '12 at 22:46
3  
What does "blank" mean exactly? Please post some sample data, using dput() –  Andrie Jul 16 '12 at 22:46

1 Answer 1

up vote 2 down vote accepted

The answer to this question depends on how paranoid you want to be about the sort of things that might be in 'blank'-appearing character strings. Here's a fairly careful approach that will match the zero-length blank string "" as well as any string composed of one or more [[:space:]] characters (i.e. "tab, newline, vertical tab, form feed, carriage return, space and possibly other locale-dependent characters", according to the ?regex help page).

## An example data.frame containing all sorts of 'blank' strings
df <- data.frame(A = c("a", "", "\n", " ", " \t\t", "b"),
                 B = c("b", "b", "\t", " ", "\t\t\t", "d"),
                 C = 1:6)

## Test each element to see if is either zero-length or contains just
## space characters
pat <- "^[[:space:]]*$"
subdf <- df[-which(names(df) %in% "C")] # removes columns not involved in the test
matches <- data.frame(lapply(subdf, function(x) grepl(pat, x))) 

## Subset df to remove rows fully composed of elements matching `pat` 
df[!apply(matches, 1, all),]
#   A B C
# 1 a b 1
# 2   b 2
# 6 b d 6

## OR, to remove rows with *any* blank entries
df[!apply(matches, 1, any),]
#   A B C
# 1 a b 1
# 6 b d 6
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@Andrie I'm still getting robot-frisked -- am trying my darndest to pass the test! This may be a sign that I've spent a bit too much time trying to think like a machine... –  Josh O'Brien Jul 16 '12 at 23:10
    
What is the 'grepl' function? –  Dombey Jul 16 '12 at 23:16
    
It's like grep, except it returns TRUE for all matches and FALSE for non-matches. Try this to see: grepl("a", c("ab", "b", "c", "a")). See also ?grepl for the official documentation. –  Josh O'Brien Jul 16 '12 at 23:20
    
But in the resulting dataset still has a row that has a space. ( 2 b 2). –  Dombey Jul 16 '12 at 23:41
    
If you want to remove rows like row 2 that have any blank entries you can use df[!apply(matches, 1, any),] instead of df[!apply(matches, 1, all),]. –  Josh O'Brien Jul 16 '12 at 23:51

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