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I have a text files with documents and their description. I am using SGD Classifier available in scikit-learn to get two separate classes of documents. I have trained my model using the following code:

fo = open('training_data.txt','rb')
all_classes = np.array([0,1])

for i,line in enumerate(generate_in_chunks(fo,1000)):

    x = [member.split('^')[2] for member in line if member!="\n"]
    y = [member.split('^')[1] for member in line if member!="\n"]
    vectorizer = HashingVectorizer(decode_error='ignore', n_features=2 ** 18,non_negative=True)

    x_train =  vectorizer.transform(x)
    y_train = np.asarray(y,dtype=int)

    clf = SGDClassifier(loss='log',penalty='l2',shuffle=True)

    clf.partial_fit(x_train, y_train,classes=all_classes)

Now I am using this clf object on my test data set. Here I want to use transform mentioned in the tutorial: http://scikit-learn.org/stable/modules/generated/sklearn.linear_model.SGDClassifier.html#sklearn.linear_model.SGDClassifier

Code:

fo = open('test_data.txt','rb')
prob_comp = open('pred_prob_actual.txt','wb')
for i,line in enumerate(generate_in_chunks(fo,21000)):
    x = [member.split('^')[2] for member in line if member!="\n"]
    y = [member.split('^')[1] for member in line if member!="\n"]

    vectorizer = HashingVectorizer(decode_error='ignore', n_features=2 ** 18,non_negative=True)

    x_test =  vectorizer.transform(x)
    y_test = np.asarray(y,dtype=int)

    clf.predict(clf.transform(x_test))

Error:

Traceback (most recent call last):

File "test.py", line 106, in clf.predict(clf.transform(x_test)) File "/opt/anaconda2.2/lib/python2.7/site-packages/sklearn/linear_model/base.py", line 223, in predict scores = self.decision_function(X) File "/opt/anaconda2.2/lib/python2.7/site-packages/sklearn/linear_model/base.py", line 204, in decision_function % (X.shape[1], n_features))

ValueError: X has 78 features per sample; expecting 206

So basically though it has identified important features but it is not able to use them while predicting on test data.

Any suggestion on how can i use transform method on test data would be widely appreciated. I want to use only the important features and looking out for ways which could help in doing that, just to make it more clear. Thanks.

  • For important features, I suggest you take a look at TfIdfVectorizer. With it, you'll be able to specify a min_df which can help you extract the more important features in the document. – Radu Gheorghiu Oct 5 '15 at 13:25
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Change your last line to:

clf.predict(x_test.toarray())

You are transforming your dataset with HashingVectorizer, but this is not sufficient. You need to apply toarray() in order to get the matrix of feature vectors on which prediction is based.

Although, for readability and for "better" (in my opinion) code structuring I would recommend you adjust your code to:

x_train =  vectorizer.fit_transform(x)
...
x_test = vectorizer.transform(x).toarray()
y_test = np.asarray(y,dtype=int)

result = clf.predict(x_test)

print result
  • Thank you Sir, I tried as you have suggested and getting the following error: Traceback (most recent call last): File "test.py", line 106, in <module> clf.predict(clf.transform(x_test).to_array()) File "/opt/anaconda2.2/lib/python2.7/site-packages/scipy/sparse/base.py", line 499, in getattr raise AttributeError(attr + " not found") AttributeError: to_array not found – Pappu Jha Oct 5 '15 at 13:05
  • @PappuJha Please have a look at my answer now. It should fix your problem. – Radu Gheorghiu Oct 5 '15 at 13:11
  • @PappuJha How about now? Adjust the line for x_train = fit_transform(x) – Radu Gheorghiu Oct 5 '15 at 13:16
  • Working Code: x_test = vectorizer.transform(x) y_test = np.asarray(y,dtype=int) result = clf.predict(x_test) print result I believe this code is using all the features but I want to use only important feature. Does you updated answer addresses my concern. Thanks!! – Pappu Jha Oct 5 '15 at 13:17
  • @PappuJha But, you need it as an array() in order for the prediction to work correctly. – Radu Gheorghiu Oct 5 '15 at 13:22

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