I'm building a binary classification model with Keras. Dataset contains many categorical features (IP address, destination number, destination address, User Agent, etc.)

I'm unable to submit predictions as features are categorical and the number of columns of training and test data is different for predictions.

  File "/Users/spicyramen/Documents/Development/Python/gl-env/lib/python2.7/site-packages/keras/models.py", line 1006, in predict
    return self.model.predict(x, batch_size=batch_size, verbose=verbose)
  File "/Users/spicyramen/Documents/Development/Python/gl-env/lib/python2.7/site-packages/keras/engine/training.py", line 1772, in predict
  File "/Users/spicyramen/Documents/Development/Python/gl-env/lib/python2.7/site-packages/keras/engine/training.py", line 153, in _standardize_input_data
ValueError: Error when checking : expected dense_1_input to have shape (None, 2134) but got array with shape (34, 102)

I'm able to split data and train model.

ruri                object
ruri_user           object
ruri_domain         object
from_user           object
from_domain         object
from_tag            object
to_user             object
contact_user        object
callid              object
content_type        object
user_agent          object
source_ip           object
source_port          int64
destination_port     int64
contact_ip          object
contact_port         int64
toll_fraud           int64

This is my logic:

  • Import data from CSV
  • Drop unneeded columns
  • Generate dummy columns (encode_one_hot)
  • Split dataset into training and test data.
  • Train model
  • Evaluate it
  • Submit predictions <-- Fails

This is my code

Training and test sizes

Samples Columns
1665 2134
555  2134


def preproc_test(self):
        """Pre-process testing data."""

        #Import data
        test = self.import_data(self.test_fn, drop=True)
        # Extract labels.
        labels = test.user_agent.values
        # Fix NA values.
        test = self.fix_na(test)

        # Feature Engineering
        #test = self.engineer_features(test)

        # Create dummy variables.
        test = encode_one_hot(test, 'ruri_user')
        test = encode_one_hot(test, 'from_user')
        test = encode_one_hot(test, 'from_domain')
        test = encode_one_hot(test, 'to_user')
        test = encode_one_hot(test, 'contact_user')
        test = encode_one_hot(test, 'user_agent')
        test = encode_one_hot(test, 'source_ip')
        test = encode_one_hot(test, 'contact_ip')
        return labels, test

def prepare_submission(self, name):
        labels, test_data = self.preproc_test()
        predictions = self.model.predict(test_data)
        subm = pd.DataFrame(np.column_stack([labels, np.around(predictions[:, 1])]).astype('int32'),
                            columns=['user_agent', 'toll_fraud'])
        subm.to_csv('%s.csv' % name, index=False)
        return subm

Original issue

Not sure if I should resize to my predictions to the same number of original features/columns, if so what is the best way?

  • print the shape of train and test data. – AkshayNevrekar Feb 21 '18 at 9:45
  • Is in one of the comments above: Training and test sizes: Samples Columns 1665 2134 555 2134 – gogasca Feb 21 '18 at 9:52

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Browse other questions tagged or ask your own question.