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I have a data.frame that contains many columns. I want to keep the rows that have no NAs in 4 of these columns. The complication arises from the fact that I have other rows that are allowed have NAs in them so I can't use complete.cases or is.na. What's the most efficient way to do this?

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1  
"Other rows" or "Other columns"? Which is it? Show us some data. – Brandon Bertelsen Oct 22 '12 at 15:50
up vote 14 down vote accepted

You can still use complete.cases(). Just apply it to the desired columns (columns 1:4 in the example below) and then use the Boolean vector it returns to select valid rows from the entire data.frame.

set.seed(4)
x <- as.data.frame(replicate(6, sample(c(1:10,NA))))
x[complete.cases(x[1:4]),]
#    V1 V2 V3 V4 V5 V6
# 1   7  4  6  8 10  5
# 2   1  2  5  5  1  2
# 5   6  8  4 10  6  6
# 6   2  6  9  3  4  4
# 7   4  3  3  1  2  1
# 9   8  5  2  7  7  3
# 10 10 10  1  2  5 NA
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i was wrong! you can use it! thank you Josh. I dont know if seeing the answer is very simple is bad or not... – pepsimax Oct 22 '12 at 16:00
1  
@pepsimax -- I think the answer is that it's wonderful that this has such a simple solution ;) Gotta love complete.cases()... – Josh O'Brien Oct 22 '12 at 16:02

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