# how to use the a 10-fold cross validation with naive bayes classifier and NLTK

I have a small corpus and I want to calculate the accuracy of naive Bayes classifier using 10-fold cross validation, how can do it. thanks

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If you show what have you tried, it's easier to get an answer. –  Francesco Montesano May 4 '13 at 21:52
First, welcome to stack overflow! But stack overflow is not a place to go when you want people to do stuff for you, it's a place to go for help on what you have tried. Please post some code that you have worked on for your cross validation. –  Ryan Saxe May 5 '13 at 3:22

Your options are to either set this up yourself or use something like NLTK-Trainer since NLTK doesn't directly support cross-validation for machine learning algorithms.

I'd recommend probably just using another module to do this for you but if you really want to write your own code you could do something like the following.

Supposing you want 10-fold, you would have to partition your training set into `10` subsets, train on `9/10`, test on the remaining `1/10`, and do this for each combination of subsets (`10`).

Assuming your training set is in a list named `training`, a simple way to accomplish this would be,

``````num_folds = 10
subset_size = len(training)/num_folds
for i in range(num_folds):
testing_this_round = training[i*subset_size:][:subset_size]
training_this_round = training[:i*subset_size] + training[(i+1)*subset_size:]
# train using training_this_round
# evaluate against testing_this_round
# save accuracy

# find mean accuracy over all rounds
``````
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thank you Jared for your answer, but what I can use the library scikit cross_validation.KFold-learn with the naive Bayes classifier of NLTK ? –  user2284345 May 5 '13 at 11:14

I've used both libraries and NLTK for naivebayes sklearn for crossvalidation as follows:

``````import nltk
from sklearn import cross_validation
training_set = nltk.classify.apply_features(extract_features, documents)
cv = cross_validation.KFold(len(training_set), n_folds=10, indices=True, shuffle=False, random_state=None, k=None)

for traincv, testcv in cv:
classifier = nltk.NaiveBayesClassifier.train(training_set[traincv[0]:traincv[len(traincv)-1]])
print 'accuracy:', nltk.classify.util.accuracy(classifier, training_set[testcv[0]:testcv[len(testcv)-1]])
``````

and at the end I calculated the average accuracy

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