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I know that for k-cross validation, I'm supposed to divide the corpus into k equal parts. Of these k parts, I'm to use k-1 parts for training and the remaining 1 part for testing. This process is to be repeated k times, such that each part is used once for testing.

But I don't understand what exactly does training mean and what exactly does testing mean .

What I think is (please correct me if I'm wrong):
1. Training sets (k-1 out of k): These sets are to be used build to the Tag transition probabilities and Emission probabilities tables. And then, apply some algorithm for tagging using these probability tables (Eg. Viterbi Algorithm)
2. Test set (1 set): Use the remaining 1 set to validate the implementation done in step 1. That is, this set from the corpus will have untagged words and I should use the step 1 implementation on this set.

Is my understanding correct? Please explain if not.

Thanks.

1 Answer 1

2

I hope this helps:

from nltk.corpus import brown
from nltk import UnigramTagger as ut

# Let's just take the first 100 sentences.
sents = brown.tagged_sents()[:1000]
num_sents = len(sents)
k = 10
foldsize = num_sents/10

fold_accurracies = []

for i in range(10):
    # Locate the test set in the fold.
    test = sents[i*foldsize:i*foldsize+foldsize]
    # Use the rest of the sent not in test for training.
    train = sents[:i*foldsize] + sents[i*foldsize+foldsize:]
    # Trains a unigram tagger with the train data.
    tagger = ut(train)
    # Evaluate the accuracy using the test data.
    accuracy = tagger.evaluate(test)
    print "Fold", i 
    print 'from sent', i*foldsize, 'to', i*foldsize+foldsize
    print 'accuracy =', accuracy 
    print
    fold_accurracies.append(accuracy)

print 'average accuracy =', sum(fold_accurracies)/k

[out]:

Fold 0
from sent 0 to 100
accuracy = 0.785714285714

Fold 1
from sent 100 to 200
accuracy = 0.745431364216

Fold 2
from sent 200 to 300
accuracy = 0.749628896586

Fold 3
from sent 300 to 400
accuracy = 0.743798291989

Fold 4
from sent 400 to 500
accuracy = 0.803448275862

Fold 5
from sent 500 to 600
accuracy = 0.779836277467

Fold 6
from sent 600 to 700
accuracy = 0.772676371781

Fold 7
from sent 700 to 800
accuracy = 0.755679184052

Fold 8
from sent 800 to 900
accuracy = 0.706402915148

Fold 9
from sent 900 to 1000
accuracy = 0.774622079707

average accuracy = 0.761723794252
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  • What exactly is happening inside the ut function here tagger = ut(train), and what's happening inside tagger.evaluate(test) ? The thing is, I want to implement those two parts- train and test. Are you just calculating the probability distribution of the tags over words inside ut(train) , and then using that probability distribution to predict the tags of the test data with tagger.evaluate(test) ?
    – sanjeev mk
    Aug 3, 2014 at 22:20
  • ut(train) is to train a new tagger. In each fold you train a new tagger. tagger.evaluate used the trained tagger to tag the test data and then counts the number of correct tags from the test set. Try to go through this tutorial before doing cross validation: nltk.org/book/ch05.html. You need to know how to evaluate normally using held out data first.
    – alvas
    Aug 3, 2014 at 22:24
  • Thanks, that link helped. I'm writing my own training implementation and wanted to know what is generally done for that. The document mentions that training involves some probabilistic analysis of words and tags.
    – sanjeev mk
    Aug 3, 2014 at 22:35

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