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.

using ipython 2.7 and a corpus with non-Ascii chars.

The cleansing process seems to be fine, but once I use either Wordnet or Porter to lemmatize the corpus, the size of the file increases exponentially. Please see code below

 from nltk.corpus import stopwords

 tokenized_docs_no_stopwords = []
 for doc in tokenized_docs_no_punctuation:
         new_term_vector = []
         for word in doc:
         if not word in stopwords.words('english'):

and the routine

 from nltk.stem.porter import PorterStemmer

 from nltk.stem.wordnet import WordNetLemmatizer

 porter = PorterStemmer()

 wordnet = WordNetLemmatizer()

  preprocessed_docs = []
 for doc in tokenized_docs_no_stopwords:
       final_doc = []
       for word in doc:

Seems to make the corpus 10 times bigger. Is the objective of removing stops words and lemmaising not supposed to reduce the corpus size?

I have tried adjusting the indentation, but I have a feeling there might be a more efficient loop than the 'append' routine, but I am more concerned about the exponential memory increase.

i am working off the example here

http://stanford.edu/~rjweiss/public_html/IRiSS2013/text2 Any help or direction would be most appreciated

share|improve this question
I don't see all indentations in code but most probably you are merely just saving way many duplicates in the loop. Make sure that final_doc.append(...) and preprocessed_docs.append(...) are indented differently (related to different for loops - first one to word in doc and latter to doc in ...). And also try saving a little bit in a file and have a look what you get there or just have a print statement somewhere to see. –  Everst Aug 14 at 1:56
One more remark - the code is bulky and must be extremely inefficient. Better at least try using dictionaries for such things instead of iterating through lists that takes forever. –  Everst Aug 14 at 1:58
Thank you so much, I took your adivce, and it all is working, i would like to post an answer using the 'dictionary' data structure, but I can't find and filter examples on stack, do you have any snippets to get me started? –  conr404 Aug 14 at 9:03

1 Answer 1

up vote 0 down vote accepted

OK- the indentation of the code was critical, but I eliminated the messing append loops and used Lamba instead:

filtered_words = stopwords.words('english')
 tokenized_docs_no_stopwords = []

tokenized_docs_no_stopwords = filter(lambda x: x not in filtered_words,       
share|improve this answer

Your Answer


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.