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I can use read.csv or read.csv2 to read data into R. But the issue I encountered is that my separator is a multiple-byte string instead of a single character. How can I deal with this?

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1  
What is your multiple-byte string? – jthetzel Oct 25 '11 at 2:01
    
I believe that if you look at the more general read.table() and the sep argument, you can use a multiple-byte string. – mweylandt Oct 25 '11 at 2:23
    
@mweylandt I think read.table()'s sep only accepts single bytes (same for scan()). – jthetzel Oct 25 '11 at 2:27
    
@jthetzel, oops: sorry about that. I like your solution below – mweylandt Oct 25 '11 at 18:08
up vote 8 down vote accepted

Providing example data would help. However, you might be able to adapt the following to your needs.

I created an example data file, which is a just a text file containing the following:

1sep2sep3
1sep2sep3
1sep2sep3
1sep2sep3
1sep2sep3
1sep2sep3
1sep2sep3

I saved it as 'test.csv'. The separation character is the 'sep' string. I think read.csv() uses scan(), which only accepts a single character for sep. To get around it, consider the following:

dat <- readLines('test.csv')
dat <- gsub("sep", " ", dat)
dat <- textConnection(dat)
dat <- read.table(dat)

readLines() just reads the lines in. gsub substitutes the multi-character seperation string for a single ' ', or whatever is convenient for your data. Then textConnection() and read.data() reads everything back in conveniently. For smaller datasets, this should be fine. If you have very large data, consider preprocessing with something like AWK to substitute the multi-character separation string. The above is from http://tolstoy.newcastle.edu.au/R/e4/help/08/04/9296.html .

Update Regarding your comment, if you have spaces in your data, use a different replacement separator. Consider changing test.csv to :

1sep2 2sep3
1sep2 2sep3
1sep2 2sep3
1sep2 2sep3
1sep2 2sep3
1sep2 2sep3
1sep2 2sep3 

Then, with the following function:

readMulti <- function(x, sep, replace, as.is = T)
{
    dat <- readLines(x)
    dat <- gsub(sep, replace, dat)
    dat <- textConnection(dat)
    dat <- read.table(dat, sep = replace, as.is = as.is)

    return(dat)
}

Try:

readMulti('test.csv', sep = "sep", replace = "\t", as.is = T)

Here, you replace the original separator with tabs (\t). The as.is is passed to read.table() to prevent strings being read in is factors, but that's your call. If you have more complicated white space within your data, you might find the quote argument in read.table() helpful, or pre-process with AWK, perl, etc.

Something similar with crippledlambda's strsplit() is most likely equivalent for moderately sized data. If performance becomes an issue, try both and see which works for you.

share|improve this answer
    
read.table will get the same error message.jthetzel's suggestion sounds like good.Actually I already leverage awk to process the raw data before I read it in R. But the question here is how we can deal with the character in the new separation character after gsub(Say, we DO have a ' ' within the value in your sample code). – RobinMin Oct 25 '11 at 3:43
    
@RobinMin Try a different replacement separator per update above. – jthetzel Oct 25 '11 at 12:48

In this case you can replace textConnection(txt) with your file name, but essentially you can build a code or function around strsplit. Here I'm assuming you have a header line, but you can of course give define a header argument and generalize the creation of your data frame based on the function below:

> read.multisep <- function(File,sep) {
+   Lines <- readLines(File)
+   Matrix <- do.call(rbind,strsplit(Lines,sep,fixed=TRUE))
+   DataFrame <- structure(data.frame(Matrix[-1,]),names=Matrix[1,]) ## assuming header is present
+   DataFrame[] <- lapply(DataFrame,type.convert)                    ## automatically convert modes
+   DataFrame
+ }
> 
> example <- "a#*&b#*&c
+ 1#*&2#*&3
+ 4#*&5#*&6"
> 
> read.multisep(textConnection(example),sep="#*&")
  a b c
1 1 2 3
2 4 5 6
share|improve this answer
    
read.multisep works fine for me~! Thanks @jthetzel – RobinMin Nov 7 '11 at 8:23

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