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'): new_term_vector.append(word) tokenized_docs_no_stopwords.append(new_term_vector)
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: final_doc.append(porter.stem(word)) #final_doc.append(snowball.stem(word)) #final_doc.append(wordnet.lemmatize(word)) preprocessed_docs.append(final_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