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I am trying to update the scikit multinomial classifier with the new training data. Here is what i had tried

from sklearn.feature_extraction.text import HashingVectorizer
import numpy as np
from sklearn.naive_bayes import MultinomialNB

# Training with first training set
targets = ['education','film','sports','laptops','phones']
x = ["football is the sport","gravity is the movie", "education is imporatant","lenovo is a laptop","android phones"]
y = np.array([2,1,0,3,4])
clf = MultinomialNB()
vectorizer = HashingVectorizer(stop_words='english', non_negative=True,
X_train = vectorizer.transform(x)
clf.partial_fit(X_train, y, classes=[0,1,2,3,4])

#Testing with First training set
test_data = ["android","lenovo","Transformers"]
X_test = vectorizer.transform(test_data)
print "Using Initial classifier"
pred = clf.predict(X_test)
for doc, category in zip(test_data, pred):
    print('%r => %s' % (doc, targets[category]))

# Training with updated training set
x = ["cricket", "Transformers is a film","which college"]
y = np.array([2,1,0])
X_train = vectorizer.transform(x)
clf.partial_fit(X_train, y)

# Testing with the updated trainign set
test_data = ["android","lenovo","Transformers"]
X_test = vectorizer.transform(test_data)
print "\nUsing Updatable classifiers"
pred = clf.predict(X_test)
for doc, category in zip(test_data, pred):
    print('%r => %s' % (doc, targets[category]))

The Output to this is

Using Initial classifier
'android' => phones
'lenovo' => laptops
'Transformers' => education

Using Updatable classifiers
'android' => sports
'lenovo' => education
'Transformers' => film

I have two questions onto this ->

1) the category for "lenovo" is coming wrong because training data for that category is not included while updating classifier. Is there any solution to avoid this. As I dont want to provide training data for each category every time I update the classifier. So It should work even if I provide the data for single category while updating.

2) how can I add new categories to the existing classifier. Like if I want a new category like "health" to the existing classifier. Then is there any way to do that.

Help is appreciated. Thanks

share|improve this question
Nice question... –  Wazzzy Aug 26 '14 at 15:16

1 Answer 1

Instead of calling fit for the first batch, call partial_fit and give it a list of all classes in your problem as the classes argument:

clf.partial_fit(X, y, classes=targets)

(This is assuming y actually contains the class labels instead of their indices.)

You cannot change the number of classes after the first call to partial_fit (or fit). You simply have to know the number of classes up front or retrain the whole model.

share|improve this answer
i tried changing the first fit method to clf.partial_fit(X_train, y, classes=[0,1,2,3,4]) but still the laptops is getting classified under education after the update. So you also suggesting that we cant add a new class after first fit. –  Gunjan Aug 7 '14 at 13:34
@Gunjan You're probably seeing a hash collision because n_features is too small in the vectorizer. Try setting it to a larger value. –  larsmans Aug 7 '14 at 13:48
tried that one..but doesnt seem to work either. Thanks though :) –  Gunjan Aug 7 '14 at 14:05

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