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I appreciate your help very much for my problem. I've been on this for weeks now, and couldn't find a solution..Sorry for the long description. I figured I post many details, so you get the problem entirely, although it's not hard to grasp.


Data frame consisting of 4 million entries (total size: 250 MB). Two columns: ID and TEXT. Text strings are each up to 200 characters.


Preprocessing the text strings


It takes too long. On my 8GB RAM Dual-Core machine: Cancelled after 1 day. On a 70GB 8-Core Amazon EC2 instance: Cancelled after 1 day.


I am basically

  • Counting how often certain words appear in one string
  • Write this number into a new column (COUNT)
  • Replace this (counted) word
  • Replace other words (which I don't need to count before)
  • Replace some regular expressions

The vectors which are used as patterns look like this:


Thus, those 'replacement vectors' are character vectors of length 1, each containing up to 800 words




  # Replace the 'html-and'
  y<, arguments)  

  # Remove some special characters
  y<, arguments)  

  # Lowercase 

  # Identify signal words and count them
  # Need to be done in parts, because otherwise R can't handle this many at once
  arguments<-list(string=x, pattern=rep_words_part1)

  arguments<-list(string=x, pattern=rep_words_part2)

  arguments<-list(string=x, pattern=rep_words_part3)

  arguments<-list(string=x, pattern=rep_words_part4)


  # Replacements

  arguments<-list(pattern=rep_wordsA,replacement=" [wordA] ",x=y,
  y<, arguments) 

  arguments<-list(pattern=rep_wordB_part1,replacement=" [wordB] ",x=y,
  y<, arguments)   

  arguments<-list(pattern=rep_wordB_part2,replacement=" [wordB] ",x=y,
  y<, arguments)   

  arguments<-list(pattern=rep_wordB_part3,replacement=" [wordB] ",x=y,
  y<, arguments)   

  arguments<-list(pattern=rep_wordB_part4,replacement=" [wordB] ",x=y,
  y<, arguments)   

  arguments<-list(pattern=rep_email,replacement=" [email_adress] ",x=y,
  y<, arguments)   

  arguments<-list(pattern=rep_url,replacement=" [url] ",x=y,
  y<, arguments)   

  arguments<-list(pattern=rep_wordC,replacement=" [wordC] ",x=y,
  y<, arguments)   

  # Some regular expressions
  arguments<-list(pattern="\\+[[:digit:]]*.?[[:digit:]]+%",replacement=" [positive_percentage] ",x=y,
  y<, arguments)   

  arguments<-list(pattern="-[[:digit:]]*.?[[:digit:]]+%",replacement=" [negative_percentage] ",x=y,
  y<, arguments)   

  arguments<-list(pattern="[[:digit:]]*.?[[:digit:]]+%",replacement=" [percentage] ",x=y,
  y<, arguments)   

  arguments<-list(pattern="\\$[[:digit:]]*.?[[:digit:]]+",replacement=" [dollar_value] ",x=y,
  y<, arguments)   

  arguments<-list(pattern="\\+[[:digit:]]*.?[[:digit:]]+",replacement=" [pos_number] ",x=y, remaining numbers 
  y<, arguments)   

  arguments<-list(pattern="\\-[[:digit:]]*.?[[:digit:]]+",replacement=" [neg_number] ",x=y,
  y<, arguments)   

  arguments<-list(pattern="[[:digit:]]*.?[[:digit:]]+",replacement=" [number] ",x=y,
  y<, arguments)   

  arguments<-list(pattern=rep_question,replacement=" [question] ", x=y,
  y<, arguments)    

  # Unify synonyms
  arguments<-list(pattern=rep_syno1,replacement="happy", x=y,
  y<, arguments)  

  arguments<-list(pattern=rep_syno2,replacement="sad", x=y,
  y<, arguments)  

  arguments<-list(pattern=rep_syno3,replacement="people", x=y,
  y<, arguments)  

  arguments<-list(pattern=rep_syno4,replacement="father", x=y,
  y<, arguments)  

  arguments<-list(pattern=rep_syno5,replacement="mother", x=y,
  y<, arguments)  

  arguments<-list(pattern=rep_syno6,replacement="money", x=y,
  y<, arguments)  

  # Remove words
  # Punctuation (I know there a pre-defined R commands for this, but I need to customize this
  arguments<-list(pattern=rem_punct,replacement="", x=y, 
  y<, arguments)  

  arguments<-list(pattern=rem_linebreak,replacement=" ", x=y, #Remove line breaks
  y<, arguments) 

  #Append Positive or Negative Emotion  
  y<, arguments)  

  # Output



(The return would be a list, which I plan to convert to a data.frame).

Before, I also tried to call each gsub seperately, thus performing the first gsub on every text string, then the second gsub and so on.. but I guess that this was even less efficient.

The code itself works, but for me it seems that this can be speeded up. Unfortunately I'm not familiar with hash tables, which is what I heard could be a solution.

Appreciate your advice and help very much!

Definition of the one function called inside preprocessText


  if (grepl(app_pos,x)){
    x<-paste(x," [posemo] ")
    x<-paste(x," [negemo] ")

Example Data:

|  ID  |                     Text                      |
| 123  | My dad and me finished the race top 5%        |
| 456  | Look at this, Like it ? |

Should become

|  ID  |                     Text                              |
| 123  | my father and me finished the race top [percentage]   |
| 456  | look at this [url] like it [question]                 |
share|improve this question
Profiling your function would be a lot easier if you provided some example data. Also, is unnecessary here. –  Joshua Ulrich Nov 6 '13 at 11:08
In addition to what @JoshuaUlrich said, I would also suggest using fixed=TRUE argument where ever you are not using regex pattern. –  Chinmay Patil Nov 6 '13 at 11:23
@JoshuaUlrich @geektrader: is this example data sufficient? The vectors for the pattern part of gsub all look like the one example provided at the beginning –  SPi Nov 6 '13 at 11:28
This sure looks like a recent post to the r-help mailing list… –  Carl Witthoft Nov 6 '13 at 13:10
yes it is! Also posted it on the mailing list .I figured it is easier to read here. –  SPi Nov 6 '13 at 13:12

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