Hi I'm classifying tweets into 7 classes. I have about 250.000 training tweets and another different 250.000 testing tweets. My code can be found bellow. training.pkl are the training tweets, testing.pkl the testing tweets. I also have the corresponding labels as you can see.
When I execute my code I see that it takes 14.9649999142 seconds to covert the testing set (raw) to a feature space. And I also measure how long it takes to classify all the tweets in the testing set, which is 0.131999969482 seconds.
Though this seems very unlikely to me that this framework is able to classify about 250.000 tweets in 0.131999969482 seconds. My question is now, is this correct ?
file = open("training.pkl", 'rb') training = cPickle.load(file) file.close() file = open("testing.pkl", 'rb') testing = cPickle.load(file) file.close() file = open("ground_truth_testing.pkl", 'rb') ground_truth_testing = cPickle.load(file) file.close() file = open("ground_truth_training.pkl", 'rb') ground_truth_training = cPickle.load(file) file.close() print 'data loaded' tweetsTestArray = np.array(testing) tweetsTrainingArray = np.array(training) y_train = np.array(ground_truth_training) # Transform dataset to a design matrix with TFIDF and 1,2 gram vectorizer = TfidfVectorizer(sublinear_tf=True, max_df=0.5, ngram_range=(1, 2)) X_train = vectorizer.fit_transform(tweetsTrainingArray) print "n_samples: %d, n_features: %d" % X_train.shape print 'COUNT' _t0 = time.time() X_test = vectorizer.transform(tweetsTestArray) print "n_samples: %d, n_features: %d" % X_test.shape _t1 = time.time() print _t1 - _t0 print 'STOP' # TRAINING & TESTING print 'SUPERVISED' print '----------------------------------------------------------' print print 'SGD' #Initialize Stochastic Gradient Decent sgd = linear_model.SGDClassifier(loss='modified_huber',alpha = 0.00003, n_iter = 25) #Train sgd.fit(X_train, ground_truth_training) #Predict print "START COUNT" _t2 = time.time() target_sgd = sgd.predict(X_test) _t3 = time.time() print _t3 -_t2 print "END COUNT" # Print report report_sgd = classification_report(ground_truth_testing, target_sgd) print report_sgd print
<248892x213162 sparse matrix of type '<type 'numpy.float64'>' with 4346880 stored elements in Compressed Sparse Row format>
<249993x213162 sparse matrix of type '<type 'numpy.float64'>' with 4205309 stored elements in Compressed Sparse Row format>