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I should know this, but I don't. And that's because factors in R can be an absolute nightmare. This is a follow-up to my previous question. I'm hoping a few of you might be able to explain in a bit more detail than the R manuals about how to preserve the column attributes when passing a data frame to a custom function. So far, the most useful information I've dug up was from Hadley's Advanced R Programming site. But that section is quite short. Here's what I have:


Edits: I've added the source code to my GitHub (EDIT: link goes to gsub.dataframe.R now). Also, I think I may have a good way to determine whether to set stringsAsFactors = FALSE in the new data frame. Or, as a much easier alternative, I could add a stringsAsFactors argument. Is it possible to use ... for more than one set of further arguments? Like having ... be the further arguments to grep anddata.frame?


Set up some data

set.seed(24)
num <- rep(1, 10); int <- 1:10; fac <- sample(LETTERS[1:3], 10, TRUE)
D <- data.frame(num, int, fac); D$char <- as.character(letters[1:10])

Here's a call to the custom function, and the result.

(newD <- grep.dataframe("6|(a|f)", D, sub = "XXX", ignore.case = TRUE))
#    num int fac char
# 1    1   1 XXX  XXX
# 2    1   2   B    b
# 3    1   3   C    c
# 4    1   4 XXX    d
# 5    1   5 XXX    e
# 6    1 XXX   C  XXX
# 7    1   7 XXX    g
# 8    1   8   B    h
# 9    1   9   B    i
# 10   1  10 XXX    j

I haven't done anything, but have tried everything I can think of, to preserve as much information about the columns as I can (i.e. class(x) <-, attr(x, "name") <-, attributes(x) <-, I(x), etc.). The result you see above is absolutely correct as it reads. However, the result below is troubling. I could use a little help with getting the final data structure to match the original data structure. I'm thinking a switch statement might do the trick?

Note that

> args(grep.dataframe)
function (pattern, X, sub = NULL, ...) 
NULL

with the sub argument calling gsub when not NULL

As always, I appreciate the help.


Note : I took the advice of Hadley (why wouldn't you?) and split this into two functions. My answer below is a new function that only calls gsub for regular expression matching.

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Do you expect the class of column int to remain integer despite inserting XXX? (Maybe you expect that XXX to be coerced to NA?) –  jbaums May 26 at 6:17
    
Good question. I haven't thought that through fully, but I'd probably want that one coerced to character in case the data frame had a column of mixed alphanumerics (i.e. 24EX6, or something similar). Perhaps NA would be better? –  Richard Scriven May 26 at 6:18
    
Another main thing is...what the heck happened to the character column? –  Richard Scriven May 26 at 6:23
    
The behaviour is expected since gsub returns character vectors, and data.frame by default coerces strings to factors. –  jbaums May 26 at 7:27
    
Take a look at this related solution. You could replace your dc <- data.frame(ap) with dc <- colClasses(data.frame(ap), sapply(X, class)), using colClasses as defined at that link. –  jbaums May 26 at 7:35
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1 Answer 1

up vote 1 down vote accepted

Column class problem was solved with this little dandy of a function that re-assigns the classes based on the originals.

.reClass <- function(x, type)
{
    switch(type,
           character = as.character(x),
           integer = as.integer(x),
           factor = as.factor(x),
           numeric = as.numeric(x))
}

> args(gsub.dataframe)
function (pattern, replacement, data, use.nums = FALSE, ...) 
NULL

use.nums is for "use numerics?", whether to replace a pattern on numeric columns. D is the original data being fed to have it's columns pattern-replaced (under certain conditions).

> sapply(D, class)
#        num         int         fac        char 
#  "numeric"   "integer"    "factor" "character" 
> x <- gsub.dataframe("2|A", "XXX", data = D, ignore.case = TRUE)
> x
#    num int fac char
# 1    1   1   C  XXX
# 2    1   2   B    b
# 3    1   3 XXX    c
# 4    1   4 XXX    d
# 5    1   5   C    e
# 6    1   6 XXX    f
# 7    1   7   C    g
# 8    1   8 XXX    h
# 9    1   9   B    i
# 10   1  10 XXX    j
> sapply(x, class)
#       num         int         fac        char 
# "numeric"   "integer"    "factor" "character" 
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