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.

my first post here! I have problems using the nltk NaiveBayesClassifier. I have a training set of 7000 items. Each training item has a description of 2 or 3 worlds and a code. I would like to use the code as label of the class and each world of the description as features. An example:

"My name is Obama", 001 ...

Training set = {[feature['My']=True,feature['name']=True,feature['is']=True,feature[Obama]=True], 001}

Unfortunately, using this approach, the training procedure NaiveBayesClassifier.train use up to 3 GB of ram.. What's wrong in my approach? Thank you!

def document_features(document): # feature extractor
document = set(document)
return dict((w, True) for w in document)

...
words=set()
entries = []
train_set= []
train_length = 2000
readfile = open("atcname.pl", 'r')
t = readfile.readline()
while (t!=""):
  t = t.split("'")
  code = t[0] #class
  desc = t[1] # description
  words = words.union(s) #update dictionary with the new words in the description
  entries.append((s,code))
  t = readfile.readline()
train_set = classify.util.apply_features(document_features, entries[:train_length])
classifier = NaiveBayesClassifier.train(train_set) # Training
share|improve this question

1 Answer 1

Use nltk.classify.apply_features which returns an object that acts like a list but does not store all the feature sets in memory.

from nltk.classify import apply_features

More Information and a Example here

You are loading the file anyway into the memory, you will need to use some form of lazy loading method. Which will load as per need basis. Consider looking into this

share|improve this answer
    
Thank you for the advice! I tried but i dont have some improvement in memory usage. Using train_set = classify.util.apply_features(document_features, entries[:1500]), with only 1500 items, i use 1.7GB.... –  Marco Mar 15 '12 at 18:27
    
Can you post a gist of your train set and the exact syntax you are trying to use. apply_features works typically very well. –  subiet Mar 16 '12 at 7:34
    
Thanks.. Updated.. –  Marco Mar 16 '12 at 11:16
    
I have updated the answer for you. –  subiet Mar 17 '12 at 7:26

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.