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- #!/usr/bin/python
- import pickle
- import cPickle
- import numpy
- from sklearn import model_selection#cross_validation
- from sklearn.feature_extraction.text import TfidfVectorizer
- from sklearn.feature_selection import SelectPercentile, f_classif
- def preprocess(words_file = "../tools/word_data.pkl", authors_file="../tools/email_authors.pkl"):
- """
- this function takes a pre-made list of email texts (by default word_data.pkl)
- and the corresponding authors (by default email_authors.pkl) and performs
- a number of preprocessing steps:
- -- splits into training/testing sets (10% testing)
- -- vectorizes into tfidf matrix
- -- selects/keeps most helpful features
- after this, the feaures and labels are put into numpy arrays, which play nice with sklearn functions
- 4 objects are returned:
- -- training/testing features
- -- training/testing labels
- """
- ### the words (features) and authors (labels), already largely preprocessed
- ### this preprocessing will be repeated in the text learning mini-project
- authors_file_handler = open(authors_file, "r")
- authors = pickle.load(authors_file_handler)
- authors_file_handler.close()
- words_file_handler = open(words_file, "r")
- word_data = cPickle.load(words_file_handler)
- words_file_handler.close()
- ### test_size is the percentage of events assigned to the test set
- ### (remainder go into training)
- features_train, features_test, labels_train, labels_test = model_selection.train_test_split(word_data, authors, test_size=0.1, random_state=42)
- ### text vectorization--go from strings to lists of numbers
- vectorizer = TfidfVectorizer(sublinear_tf=True, max_df=0.5,
- stop_words='english')
- features_train_transformed = vectorizer.fit_transform(features_train)
- features_test_transformed = vectorizer.transform(features_test)
- ### feature selection, because text is super high dimensional and
- ### can be really computationally chewy as a result
- selector = SelectPercentile(f_classif, percentile=1)
- selector.fit(features_train_transformed, labels_train)
- features_train_transformed = selector.transform(features_train_transformed).toarray()
- features_test_transformed = selector.transform(features_test_transformed).toarray()
- ### info on the data
- print "no. of Chris training emails:", sum(labels_train)
- print "no. of Sara training emails:", len(labels_train)-sum(labels_train)
-
- return features_train_transformed, features_test_transformed, labels_train, labels_test
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