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 have almost 3.000 CSV files (containing tweets) with the same format, I want to merge these files into one new file and remove the duplicate tweets. I have come across various topics discussing similar questions however the number of files is usually quit small. I hope you can help me write a code within R that does this job both efficiently and effectively.

The CSV files have the following format:

Image of CSV format: Example CSV files

I changed (in column 2 and 3) the usernames (on Twitter) to A-E and the 'actual names' to A1-E1.

Raw text file:

"tweet";"author";"local.time"
"1";"2012-06-05 00:01:45 @A (A1):  Cruijff z'n met-zwart-shirt-zijn-ze-onzichtbaar logica is even mooi ontkracht in #bureausport.";"A (A1)";"2012-06-05 00:01:45"
"2";"2012-06-05 00:01:41 @B (B1):  Welterusten #BureauSport";"B (B1)";"2012-06-05 00:01:41"
"3";"2012-06-05 00:01:38 @C (C1):  Echt ..... eindelijk een origineel sportprogramma #bureausport";"C (C1)";"2012-06-05 00:01:38"
"4";"2012-06-05 00:01:38 @D (D1):  LOL. \"Na onderzoek op de Fontys Hogeschool durven wij te stellen dat..\" Want Fontys staat zo hoog aangeschreven? #bureausport";"D (D1)";"2012-06-05 00:01:38"
"5";"2012-06-05 00:00:27 @E (E1):  Ik kijk Bureau sport op Nederland 3. #bureausport  #kijkes";"E (E1)";"2012-06-05 00:00:27"

Somehow my headers are messed up, they obviously should move one column to the right. Each CSV file contains up to 1500 tweets. I would like to remove the duplicates by checking the 2nd column (containing the tweets) simply because these should be unique and the author columns can be similar (e.g. one author posting multiple tweets).

Is it possible to combine merging the files and removing the duplicates or is this asking for trouble and should the processes be separated? As a starting point I included two links two blogs from Hayward Godwin that discuss three approaches for merging CSV files.

http://psychwire.wordpress.com/2011/06/03/merge-all-files-in-a-directory-using-r-into-a-single-dataframe/

http://psychwire.wordpress.com/2011/06/05/testing-different-methods-for-merging-a-set-of-files-into-a-dataframe/

Obviously there are some topics related to my question on this site as well (e.g. Merging multiple csv files in R) but I haven't found anything that discusses both merging and removing the duplicates. I really hope you can help me and my limited R knowledge deal with this challenge!

Although I have tried some codes I found on the web, this didn't actually result in an output file. The approximately 3.000 CSV files have the format discussed above. I meanly tried the following code (for the merge part):

filenames <- list.files(path = "~/")
do.call("rbind", lapply(filenames, read.csv, header = TRUE))              

This results in the following error:

Error in file(file, "rt") : cannot open the connection 
In addition: Warning message: 
In file(file, "rt") : 
  cannot open file '..': No such file or directory 

Update

I have tried the following code:

 # grab our list of filenames
 filenames <- list.files(path = ".", pattern='^.*\\.csv$')
 # write a special little read.csv function to do exactly what we want
 my.read.csv <- function(fnam) { read.csv(fnam, header=FALSE, skip=1, sep=';',     col.names=c('ID','tweet','author','local.time'), colClasses=rep('character', 4)) }
 # read in all those files into one giant data.frame
 my.df <- do.call("rbind", lapply(filenames, my.read.csv))
 # remove the duplicate tweets
 my.new.df <- my.df[!duplicated(my.df$tweet),]

But I run into the following errors:

After the 3rd line I get:

  Error in read.table(file = file, header = header, sep = sep, quote = quote,  :  more columns than column names

After the 4th line I get:

  Error: object 'my.df' not found

I suspect that these errors are caused by some failures made in the writing process of the csv files, since there are some cases of the author/local.time being in the wrong column. Either to the left or the right of where they supposed to be which results in an extra column. I manually adapted 5 files, and tested the code on these files, I didn't get any errors. However its seemed like nothing happened at all. I didn't get any output from R?

To solve the extra column problem I adjusted the code slightly:

 #grab our list of filenames
 filenames <- list.files(path = ".", pattern='^.*\\.csv$')
 # write a special little read.csv function to do exactly what we want
 my.read.csv <- function(fnam) { read.csv(fnam, header=FALSE, skip=1, sep=';',   col.names=c('ID','tweet','author','local.time','extra'), colClasses=rep('character', 5)) }
 # read in all those files into one giant data.frame
 my.df <- do.call("rbind", lapply(filenames, my.read.csv))
 # remove the duplicate tweets
 my.new.df <- my.df[!duplicated(my.df$tweet),]

I tried this code on all the files, although R clearly started processing, I eventually got the following errors:

 Error in read.table(file = file, header = header, sep = sep, quote = quote,  : more columns than column names
 In addition: Warning messages:
 1: In read.table(file = file, header = header, sep = sep, quote = quote,  : incomplete final line found by readTableHeader on 'Twitts -  di mei 29 19_22_30 2012 .csv'
 2: In read.table(file = file, header = header, sep = sep, quote = quote,  : incomplete final line found by readTableHeader on 'Twitts -  di mei 29 19_24_31 2012 .csv'

 Error: object 'my.df' not found

What did I do wrong?

share|improve this question
    
Show some of the code that you are using. It's possible that you are sending the wrong header argument to your read.csv(). –  Andrie Jun 9 '12 at 13:45
    
Your question is clear enough, but it's not clear what you have done so far and why it doesn't work. Show the read.csv() call that you use to read a file. Then we can comment on what you are doing wrong. –  Andrie Jun 9 '12 at 14:12
    
I edited my question, hope this is what your after? –  Gert Jun 9 '12 at 14:13
    
Does filename contain the correct list of files that you want to import? This code clearly falls over on one of the read.csv statements. It could be that you need to change the list.files() to return the full path. What is your working directory? –  Andrie Jun 9 '12 at 14:23
    
The working directory is the file that contains all the CSV files. Thus list.files() should 'load' the CSV files I'm after. For the filename part, this is specified by the files loaded by list.files isn't? –  Gert Jun 9 '12 at 14:28
show 2 more comments

1 Answer

up vote 4 down vote accepted

First, simplify matters by being in the folder where the files are and try setting the pattern to read only files with the file ending '.csv', so something like

filenames <- list.files(path = ".", pattern='^.*\\.csv$')
my.df <- do.call("rbind", lapply(filenames, read.csv, header = TRUE))

This should get you a data.frame with the contents of all the tweets

A separate issue is the headers in the csv files. Thankfully you know that all files are identical, so I'd handle those something like this:

read.csv('fred.csv', header=FALSE, skip=1, sep=';',
    col.names=c('ID','tweet','author','local.time'),
    colClasses=rep('character', 4))

Nb. changed so all columns are character, and ';' separated

I'd parse out the time later if it was needed...

A further separate issue is the uniqueness of the tweets within the data.frame - but I'm not clear if you want them to be unique to a user or globally unique. For globally unique tweets, something like

my.new.df <- my.df[!duplicated(my.df$tweet),]

For unique by author, I'd append the two fields - hard to know what works without the real data though!

my.new.df <- my.df[!duplicated(paste(my.df$tweet, my.df$author)),]

So bringing it all together and assuming a few things along the way...

# grab our list of filenames
filenames <- list.files(path = ".", pattern='^.*\\.csv$')
# write a special little read.csv function to do exactly what we want
my.read.csv <- function(fnam) { read.csv(fnam, header=FALSE, skip=1, sep=';',
    col.names=c('ID','tweet','author','local.time'),
    colClasses=rep('character', 4)) }
# read in all those files into one giant data.frame
my.df <- do.call("rbind", lapply(filenames, my.read.csv))
# remove the duplicate tweets
my.new.df <- my.df[!duplicated(my.df$tweet),]

Based on the revised warnings after line 3, it's a problem with files with different numbers of columns. This is not easy to fix in general except as you have suggested by having too many columns in the specification. If you remove the specification then you will run into problems when you try to rbind() the data.frames together...

Here is some code using a for() loop and some debugging cat() statements to make more explicit which files are broken so that you can fix things:

filenames <- list.files(path = ".", pattern='^.*\\.csv$')

n.files.processed <- 0 # how many files did we process?
for (fnam in filenames) {
  cat('about to read from file:', fnam, '\n')
  if (exists('tmp.df')) rm(tmp.df)
  tmp.df <- read.csv(fnam, header=FALSE, skip=1, sep=';',
             col.names=c('ID','tweet','author','local.time','extra'),
             colClasses=rep('character', 5)) 
  if (exists('tmp.df') & (nrow(tmp.df) > 0)) {
    cat('  successfully read:', nrow(tmp.df), ' rows from ', fnam, '\n')
    # now lets append a column containing the originating file name
    # so that debugging the file contents is easier
    tmp.df$fnam <- fnam

    # now lets rbind everything together
    if (exists('my.df')) {
      my.df <- rbind(my.df, tmp.df)
    } else {
      my.df <- tmp.df
    }
  } else {
    cat('  read NO rows from ', fnam, '\n')
  }
}
cat('processed ', n.files.processed, ' files\n')
my.new.df <- my.df[!duplicated(my.df$tweet),]
share|improve this answer
    
Thnx Sean, will give this a go tomorrow! There are only .csv files in the folder, so the pattern part seems to be unnecessary.. –  Gert Jun 9 '12 at 17:03
    
I had some time to spare, and thus decided to test your suggestion Sean. I got the following error after trying the first part of the code.. Error in read.table(file = file, header = header, sep = sep, quote = quote, : more columns than column names –  Gert Jun 9 '12 at 18:35
    
Hi there, could you post the first few lines of one of your csv files (assuming that's ok) and indicate if all of them have the same format? –  Tim P Jun 10 '12 at 0:45
    
Tim, I have edited my question and included an image as an example of my csv files. I have chosen an image because simply copy pasting ruined the lay-out of the question. All CSV files have the same format, the number of tweets varies with a max. of 1500 per csv file. –  Gert Jun 10 '12 at 9:20
    
Seems like the header of your CSV files wouldn't fit the columns. Can you check that? –  fotNelton Jun 10 '12 at 9:21
show 11 more comments

Your Answer

 
discard

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.