I've got a data file A with 7 columns, no missing values, to which I've unix-
joined a data file B that has 28 fields. The result file is C. If no match is found in B, then the output row in C only has 7 columns. If there is a match in B, then the output row in C has 35 columns. I've kicked around
-e option to fill the missings 28 filds, but without success.
What I'm trying to do is duplicate SAS's
MISSOVER input statement in R. For example the following code works perfectly:
dat <- textConnection('x1,x2,x3,x4 1,2,"present","present" 3,4 5,6') df <- read.csv(dat, sep=',' , header=T , colClasses = c("numeric" , "numeric", "character", "character")) > df x1 x2 x3 x4 1 1 2 present present 2 3 4 3 5 6
But when I try to load my C file, I get the following error (using
TRUE instead of
df <- read.table( 'C.tab' , header=T , sep='\t', fill=TRUE, colClasses = c(rep('numeric',7),rep('character',28))) Error in scan(file, what, nmax, sep, dec, quote, skip, nlines, na.strings, : line 1 did not have 35 elements
The first line (second row in C, after the header), does indeed have only those 7 fields from A. In SAS I'd use the
MISSOVER statement to set all those trailing missing fields to some missing value. How can I do that in R? Thanks.