I have the same question which has been asked in here:

I have a question about using cross validation in text classification in sklearn. It is problematic to vectorize all data before cross validation, because the classifier would have "seen" the vocabulary occurred in the test data. Weka has filtered classifier to solve this problem. What is the sklearn equivalent for this function? I mean for each fold, the feature set would be different because the training data are different.

However, because I am doing lots of processing for the data between the categorization step and the classification step, I cannot use pipelines ... and was trying to implement the cross validation by my self as an outer loop for the whole process ... any guidance on this as I am fairly new to both python and sickitlearn

2 Answers 2


I think using the cross-validation iterator as an outer loop is a good idea and a starting point that would make your steps clear and readable:

from sklearn.cross_validation import KFold
X = np.array(["Science today", "Data science", "Titanic", "Batman"]) #raw text
y = np.array([1, 1, 2, 2]) #categories e.g., Science, Movies
kf = KFold(y.shape[0], n_folds=2)
for train_index, test_index in kf:
    x_train, y_train = X[train_index], y[train_index] 
    x_test, y_test = X[test_index], y[test_index]
    #Now continue with your pre-processing steps..
  • Thanks .. This is exactly what I was looking for.
    – Ophilia
    Commented Jun 26, 2016 at 17:26
  • Just adding updated code! from sklearn.model_selection import KFold import numpy as np X = np.array(["Science today", "Data science", "Titanic", "Batman"]) #raw text y = np.array([1, 1, 2, 2]) #categories e.g., Science, Movies kf = KFold(n_splits=2) for train_index, test_index in kf.split(X): x_train, y_train = X[train_index], y[train_index] x_test, y_test = X[test_index], y[test_index]
    – Snehal
    Commented Aug 23, 2017 at 20:56

I may be missing the meaning of your question and am unfamiliar with Weka, but you can pass the vocabulary as a dictionary into the vectorizer you use in sklearn. Here is an example that will skip the word 'second' in the test set, using only features from the train set.

from sklearn.feature_extraction.text import CountVectorizer

train_vectorizer = CountVectorizer()
train = [
    'this is the first',
    'set of documents'

train_matrix = train_vectorizer.fit_transform(train)
train_vocab = train_vectorizer.vocabulary_

test = [
    'this is the second',
    'set of documents'

test_vectorizer = CountVectorizer(vocabulary=train_vocab)
test_matrix = test_vectorizer.fit_transform(test)


Also note that you could use your own processing and/or tokenization processes in the vectorizer like:

def preprocessor(string):
    #do logic here

def tokenizer(string):
    # do logic here

from sklearn.cross_validation import cross_val_score
from sklearn.feature_extraction.text import TfidfVectorizer
from sklearn.pipeline import Pipeline
from sklearn.svm import LinearSVC
clf = Pipeline([('vect', TfidfVectorizer(processor=preprocessor, tokenizer=tokenizer)), ('svm', LinearSVC())])
  • I am doing some sampling between the vectorising and the classification step and because of that I wasn't able to put it in a pipeline .. On the same time I want to do cross validation which needs to have a pipeline or , as a solution , I was thinking of doing an outer loop which partition the data for cross validation then I go to process/classify each data on the cv iterations
    – Ophilia
    Commented Jun 25, 2016 at 16:39

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