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Let's say I have rows like this:

    First, Last, Address, Address 2, Email, Custom1, Custom2, Custom3
1    A, B, C, D, E@E.com,1,2,3
2    A,  , C, D, E@E.com,1,2,
3     ,  ,  ,  , E@E.com,1, ,  

What I would like to to do is create a function that pulls that row which is most complete and I'm wondering if there are any packages or pre-existing methods (recommendations, even) for doing this. In the example above, I would like to to have a function that chooses row 1.

I can't use complete.cases() or na.omit() because in many circumstances the cases are not complete and contain at least one NA. I've tried combining unique() with a number of specific pulls... but I'm not having much luck automating this manipulation task.

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up vote 1 down vote accepted

You can convert to character and the count row-wise how many non-emptys you have:

R> Lines <- "
+ First, Last, Address, Address 2, Email, Custom1, Custom2, Custom3
+  A, B, C, D, E@E.com,1,2,3
+  A,  , C, D, E@E.com,1,2,
+   ,  ,  ,  , E@E.com,1, ,
+ "
R> 
R> con <- textConnection(Lines)
R> df <- read.table(con, header=TRUE, sep=",")
R> close(con)
R> 
R> m <- as.matrix(df)  # now all char
R> 
R> counts <- apply(m, 1, function(r) { r <- gsub("^ $", "", r); 
+                                      sum(na.omit(r) != "") } )
R> 
R> df[which.max(counts), ]   # pick row of maximum
  First Last Address Address.2    Email Custom1 Custom2 Custom3
1     A    B       C         D  E@E.com       1       2       3
R> 
share|improve this answer
    
This could work really well, I just have to figure out how to extend it for multiple email addresses. In my example, I provided just one subset for one email address but in my actual file I have thousands of unique email addresses each with their own subset of rows. – Brandon Bertelsen Dec 6 '10 at 16:44
2  
Then the email addresses become a factor and you use aggregate, by, *ply, ... to sweep over the unique values of the factor, applying the solution shown here to each such chunk. – Dirk Eddelbuettel Dec 6 '10 at 16:56

You can use the facts that "" is less than either any letter or any number, so just use sum (x >"" , na.rm=TRUE) in an apply framework:

> apply(tst, 1, function(x) sum(x > "", na.rm=TRUE))
[1] 8 7 6
> idx <- apply(tst, 1, function(x) sum(x > "", na.rm=TRUE))
> tst[which.max(idx),]
   First Last Address Address.2    Email Custom1 Custom2 Custom3
1 1    A    B       C         D  E@E.com       1       2       3
share|improve this answer
    
A similar but simpler approach to what Dirk has done above. Thanks! – Brandon Bertelsen Dec 6 '10 at 16:45
    
It's the same, really. I just started showing how I got the data.frame, made it a matrix etc pp -- the key is to sweep across rows and run sums of the comparisons. And that is the same. – Dirk Eddelbuettel Dec 6 '10 at 16:48
1  
@Brandon: In answer to your follow-up question below Dirk's answer: You could "apply" this function within unique collections of lines having the same email address by using tapply or aggregate. I'm sure there are power-plyr and power-data.table users that could get you something either more compact or faster depending on which of those you went with. – 42- Dec 6 '10 at 19:26

Although there are already some working solutions I post mine. It is similar (in using apply and sum) but uses regular expressions (via grepl) for achieving it. So you can try to use any pattern you want. The used 'trick' is that logical values can be summed:

x <- structure(list(First = c("A", "A", ""), Last = c("B", "  ", "  "
), Address = c("C", "C", "  "), Address.2 = c("D", "D", "  "), 
    Email = c(" E@E.com", " E@E.com", " E@E.com"), Custom1 = c(1L, 
    1L, 1L), Custom2 = c(2L, 2L, NA), Custom3 = c(3L, NA, NA)), .Names = c("First", 
"Last", "Address", "Address.2", "Email", "Custom1", "Custom2", 
"Custom3"), class = "data.frame", row.names = c(NA, -3L))

mostComplete <- function(x) {
    tmp <- apply(x,1,grepl, pattern = "[[:alnum:]]")
    return(which.max(apply(tmp,2,sum)))
}

mostComplete(x)

[1] 1

PS: Give the youth a chance...

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