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 am new to working in R and am grappling with a number of large matched datasets with ~10 columns, and ~200000 rows. Not all columns contain values for each row, although at least one column must contain a value for the row to be present, I would like to set a threshold for how many NAs are allowed in a row.

My Dataframe looks something like this:

 ID q  r  s  t  u  v  w  x  y  z
 A  1  5  NA 3  8  9  NA 8  6  4
 B  5  NA 4  6  1  9  7  4  9  3 
 C  NA 9  4  NA 4  8  4  NA 5  NA
 D  2  2  6  8  4  NA 3  7  1  32 

And I would like to be able to delete the rows that contain more than 2 cells containing NA to get

ID q  r  s  t  u  v  w  x  y  z
 A 1  5  NA 3  8  9  NA 8  6  4
 B 5  NA 4  6  1  9  7  4  9  3 
 D 2  2  6  8  4  NA 3  7  1  32 

Complete.cases() removes all rows containing any NA, and I know one can delete rows that contain NA in certain columns but is there a way to modify it so that it is non-specific about which columns contain NA, but how many of the total do?

Alternatively, this dataframe is generated by merging several dataframes using



Perhaps the merge function could be altered?


share|improve this question

4 Answers 4

Use rowSums. To remove rows from a data frame (df) that contain precisely n NA values:

df <- df[rowSums(is.na(df)) != n, ]

or to remove rows that contain n or more NA values:

df <- df[rowSums(is.na(df)) < n, ]

in both cases of course replacing n with the number that's required

share|improve this answer
+1 for the use of n. You might want to explain what n is meant to represent though. –  Ricardo Saporta Aug 8 '13 at 1:34
This generates a new column named row.names in df, why is that? This is one of the R phenomena that I just do not understand. Sometimes functions output extra stuff that I don' t expect. –  Zhubarb Dec 4 '13 at 10:17

If dat is the name of your data.frame the following will return what you're looking for:

keep <- rowSums(is.na(dat)) < 2
dat <- dat[keep, ] 

What this is doing:

# returns a matrix of T/F
# note that when adding logicals 
# T == 1, and F == 0

# quickly computes the total per row 
# since your task is to identify the
# rows with a certain number of NA's 

rowSums(.) < 2 
# for each row, determine if the sum 
# (which is the number of NAs) is less
# than 2 or not.  Returns T/F accordingly 

We use the output of this last statement to identify which rows to keep. Note that it is not necessary to actually store this last logical.

share|improve this answer

If d is your data frame, try this:

d <- d[rowSums(is.na(d)) < 2,]
share|improve this answer

This will return a dataset where at most two values per row are missing:

dfrm[ apply(dfrm, 1, function(r) sum(is.na(x)) <= 2 ) , ]
share|improve this answer

Your Answer


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.