Chapter 6 topics• How can we identify particular features
of language data that are salient for classifying it?
• How can we construct models of language that can be used to perform language processing tasks automatically?
• What can we learn about language from these models?
From words to larger units• We looked at how words are indentified
with a part of speech. That is an essential part of “understanding” textual material
• Now, how can we classify whole documents.– These techniques are used for spam
detection, for identifying the subject matter of a news feed, and for many other tasks related to categorizing text
Case studyMale and female names
• Note this is language biased (English)• These distinctions are harder given
modern naming conventions– I have a granddaughter named Sydney, for
example
Step 1: features and encoding• Deciding what features to look for and how
to represent those features is the first step, and is critical.– All the training and classification will be based
on these decisions• Initial choice for name identification: look
at the last letter:>>> def gender_features(word):... return {'last_letter': word[-1]}>>> gender_features('Shrek'){'last_letter': 'k'}
returns a dictionary (note the { } ) with a feature name and the corresponding value
Step 2: Provide training values• We provide a list of examples and their
corresponding feature values. >>> from nltk.corpus import names>>> import random>>> names = ([(name,'male') for name in names.words('male.txt')] + ... [(name, 'female') for name in names.words('female.txt')])>>> random.shuffle(names)>>> names[('Kate', 'female'), ('Eleonora', 'female'), ('Germaine', 'male'), ('Helen', 'female'), ('Rachelle', 'female'), ('Nanci', 'female'), ('Aleta', 'female'), ('Catherin', 'female'), ('Clementia', 'female'), ('Keslie', 'female'), ('Callida', 'female'), ('Horatius', 'male'), ('Kraig', 'male'), ('Cindra', 'female'), ('Jayne', 'female'), ('Fortuna', 'female'), ('Yovonnda', 'female'), ('Pam', 'female'), ('Vida', 'female'), ('Margurite', 'female'), ('Maryellen', 'female'), …
• Try it. Apply the classifier to your name:
• Try it on the test data and see how it does:
>>> featuresets = [(gender_features(n), g) for (n,g) in names]>>> train_set, test_set = featuresets[500:], featuresets[:500]>>> classifier = nltk.NaiveBayesClassifier.train(train_set)
>>> classifier.classify(gender_features('Sydney'))'female'
>>> print nltk.classify.accuracy(classifier, test_set)0.758
Your turn• Modify the gender_features function to
look at more of the name than the last letter. Does it help to look at the last two letters? the first letter? the length of the name? Try a few variations
What is most useful• There is even a function to show what
was most useful in the classification:
>>> classifier.show_most_informative_features(10)Most Informative Featureslast_letter = 'k' male : female = 45.7 : 1.0last_letter = 'a' female : male = 38.4 : 1.0last_letter = 'f' male : female = 28.7 : 1.0last_letter = 'v' male : female = 11.2 : 1.0last_letter = 'p' male : female = 11.2 : 1.0last_letter = 'd' male : female = 9.8 : 1.0last_letter = 'm' male : female = 8.9 : 1.0last_letter = 'o' male : female = 8.3 : 1.0last_letter = 'r' male : female = 6.7 : 1.0last_letter = 'g' male : female = 5.6 : 1.0
What features to use• Overfitting– Being too specific about the characteristics
that you search for– Picks up idiosyncrasies of the training data
and may not transfer well to the test data• Choose an initial feature set and then
test.
Testing stages
>>> train_set = [(gender_features(n), g) for (n,g) in train_names]>>> devtest_set = [(gender_features(n), g) for (n,g) in devtest_names]>>> test_set = [(gender_features(n), g) for (n,g) in test_names]>>> classifier = nltk.NaiveBayesClassifier.train(train_set) >>> print nltk.classify.accuracy(classifier, devtest_set) 0.765
>>> train_names = names[1500:]>>> devtest_names = names[500:1500]>>> test_names = names[:500]
Accuracy noted, but where were the problems?
• Check the classifier against the known values and see where it failed:
>>> errors = []>>> for (name, tag) in devtest_names:... guess = classifier.classify(gender_features(name))... if guess != tag:... errors.append( (tag, guess, name) )
>>> for (tag, guess, name) in sorted(errors): ... print 'correct=%-8s guess=%-8s name=%-30s' % (tag, guess, name)...correct=female guess=male name=Cindely ...correct=female guess=male name=Katheryncorrect=female guess=male name=Kathryn ...correct=male guess=female name=Aldrich ...correct=male guess=female name=Mitch
Error analysis• It turns out that using the last two letters
improves the accuracy. • Did you find that in your
experimentation?
Document classification• Many uses.• Case study, classifying movie reviews >>> from nltk.corpus import movie_reviews>>> documents = [(list(movie_reviews.words(fileid)), category)... for category in movie_reviews.categories()... for fileid in movie_reviews.fileids(category)]>>> random.shuffle(documents)
• Feature extraction for documents will use words• Find most common words in the document set
and see which words are in which types of documents
Feature extractor. Are the words present in the documents
all_words = nltk.FreqDist(w.lower() for w in movie_reviews.words())word_features = all_words.keys()[:2000]
def document_features(document): document_words = set(document) features = {} for word in word_features: features['contains(%s)' % word] = (word in document_words) return features >>> print document_features(movie_reviews.words('pos/cv957_8737.txt')) {'contains(waste)': False, 'contains(lot)': False, ...}
Compute accuracy and see what are the most useful feature values
featuresets = [(document_features(d), c) for (d,c) in documents]train_set, test_set = featuresets[100:], featuresets[:100]classifier = nltk.NaiveBayesClassifier.train(train_set) >>> print nltk.classify.accuracy(classifier, test_set) 0.81>>> classifier.show_most_informative_features(5) Most Informative Features contains(outstanding) = True pos : neg = 11.1 : 1.0 contains(seagal) = True neg : pos = 7.7 : 1.0 contains(wonderfully) = True pos : neg = 6.8 : 1.0 contains(damon) = True pos : neg = 5.9 : 1.0 contains(wasted) = True neg : pos = 5.8 : 1.0
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