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I wrote a simple document classifier and I am currently testing it on the Brown Corpus. However, my accuracy is still very low (0.16). I've already excluded stopwords. Any other ideas on how to improve the classifier's performance?

import nltk, random

from nltk.corpus import brown, stopwords



documents = [(list(brown.words(fileid)), category)
        for category in brown.categories()
        for fileid in brown.fileids(category)]


random.shuffle(documents)

stop = set(stopwords.words('english'))


all_words = nltk.FreqDist(w.lower() for w in brown.words() if w in stop) 

word_features = list(all_words.keys())[:3000]

def document_features(document):
    document_words = set(document)
    features = {}
    for word in word_features:
       features['contains(%s)' % word] = (word in document_words)
    return features

featuresets = [(document_features(d), c) for (d,c) in documents] 

train_set, test_set = featuresets[100:], featuresets[:100]

classifier = nltk.NaiveBayesClassifier.train(train_set)

print(nltk.classify.accuracy(classifier, test_set))
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  • I think there is a problem with the code edition, there seem to be two lines that are commented before classifier = nltk... that are required. BTW, this does not use a naive bayes classifier, but a Decision Tree Classifier so you should probably change the tag and title. Commented Jul 17, 2017 at 13:14
  • You're not excluding stop words, you're only including them. Change: all_words = nltk.FreqDist(w.lower for w in brown.words() if w in stop) to all_words = nltk.FreqDist(w.lower for w in brown.words() if w not in stop) Commented Jul 18, 2017 at 5:59

2 Answers 2

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If that's really your code, it's a wonder you get anything at all. w.lower is not a string, it's a function (method) object. You need to add the parentheses:

>>> w = "The"
>>> w.lower
<built-in method lower of str object at 0x10231e8b8>
>>> w.lower()
'the'

(But who knows really. You need to fix the code in your question, it's full of cut-and-paste errors and who knows what else. Next time, help us help you better.)

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I would start by changing the first comment from:

import corpus documents = [(list(brown.words(fileid)), category) to:

documents = [(list(brown.words(fileid)), category) ...

In addition to changing the w.lower as the other answer says.

Changing this and following these two links below which implements a basic Naive Classifier without removing stop words gave me an accuracy of 33% which is a lot higher than 16%. https://pythonprogramming.net/words-as-features-nltk-tutorial/ https://pythonprogramming.net/naive-bayes-classifier-nltk-tutorial/?completed=/words-as-features-nltk-tutorial/

There are lots of things you can try to see if it improves your accuracy:

1- removing stop words

2- removing punctuation

3- removing the most common words and the least common words

4- normalizing the text

5- stemming or lemmatizing the text

6- I think this feature-set gives True if the word is present and False if it is not present. You can implement a count or a frequency.

7- You can use unigrams, bigrams and trigrams or combinations of those.

Hope that helped

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  • Thanks, I'm a total Python beginner and I really appreciate your help Commented Jul 19, 2017 at 14:24

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