I am looking for a simple example on how to run a Multinomial Naive Bayes Classifier. I came across this example from StackOverflow:

Implementing Bag-of-Words Naive-Bayes classifier in NLTK

```
import numpy as np
from nltk.probability import FreqDist
from nltk.classify import SklearnClassifier
from sklearn.feature_extraction.text import TfidfTransformer
from sklearn.feature_selection import SelectKBest, chi2
from sklearn.naive_bayes import MultinomialNB
from sklearn.pipeline import Pipeline
pipeline = Pipeline([('tfidf', TfidfTransformer()),
('chi2', SelectKBest(chi2, k=1000)),
('nb', MultinomialNB())])
classif = SklearnClassifier(pipeline)
from nltk.corpus import movie_reviews
pos = [FreqDist(movie_reviews.words(i)) for i in movie_reviews.fileids('pos')]
neg = [FreqDist(movie_reviews.words(i)) for i in movie_reviews.fileids('neg')]
add_label = lambda lst, lab: [(x, lab) for x in lst]
#Original code from thread:
#classif.train(add_label(pos[:100], 'pos') + add_label(neg[:100], 'neg'))
classif.train(add_label(pos, 'pos') + add_label(neg, 'neg'))#Made changes here
#Original code from thread:
#l_pos = np.array(classif.batch_classify(pos[100:]))
#l_neg = np.array(classif.batch_classify(neg[100:]))
l_pos = np.array(classif.batch_classify(pos))#Made changes here
l_neg = np.array(classif.batch_classify(neg))#Made changes here
print "Confusion matrix:\n%d\t%d\n%d\t%d" % (
(l_pos == 'pos').sum(), (l_pos == 'neg').sum(),
(l_neg == 'pos').sum(), (l_neg == 'neg').sum())
```

I received a warning after running this example.

```
C:\Python27\lib\site-packages\scikit_learn-0.13.1-py2.7-win32.egg\sklearn\feature_selection\univariate_selection.py:327:
UserWarning: Duplicate scores. Result may depend on feature ordering.There are probably duplicate features,
or you used a classification score for a regression task.
warn("Duplicate scores. Result may depend on feature ordering."
Confusion matrix:
876 124
63 937
```

So, my questions are..

- Can anyone tell me what does this error message means?
- I made some changes to the original code but why is the confusion matrix results so much higher than the one in the original thread?
- How can I test the accuracy of this of this classifier?