Skip to main content

Short text Classifier based on Numpy,scikit-learn,Pandas,Matplotlib

Project description

A simple, efficient short-text classification tool based on Numpy,scikit-learn,Pandas,Matplotlib.

Train Data Format

type

Text

game

The LoL champions pro players would ban forever

society

In Beijing you should keep the rules

etc.

etc.

Sample Usage

>>> import TextClassifier

    # cerat classifier container
>>> tc = TextClassifier.classifier_container()

    # load data.sep Default = ',' you can change it to '\t',etc.
>>> tc.load_Data('../data/Train_data.txt',sep=',')

    # train the model
>>> tc.train()

# prediction. Input list or text-String
>>> print tc.predict('Faker is the first League of Legends player to earn over $1 million in prize money')
>>> [u'game']
>>> print tc.predict(['Faker is the first League of Legends player to earn over $1 million in prize money',
                    '18-year-old youth killed 88-year-old veteran',
                    'Take you into the real North Korea'])
>>> [u'game',u'society',u'world']

    #get X_train, X_test, y_train, y_test
>>> from sklearn import cross_validation
>>> X_train, X_test, y_train, y_test = cross_validation.train_test_split(original_data['Text'], original_data['Categorization'], test_size=0.3, random_state=0)

#get TrainData Accuracy
>>> tc.Accuracy(X_train, y_train)
>>> Accuracy:
>>> 0.917504310503

#get Confusion Matrix
>>> Y_predict = tc.predict(X_test)
>>> tc.confusion_matrix(y_test, Y_predict)

>>> Confusion Matrix :
               military  baby   car  game  food  sports  finance  discovery  regimen  travel  fashion  history  society  story  tech  world  entertainment  essay
military           2831     5     3    16     9       4        8         10        0      15        8       24        9      3     6     42              6      1
baby                  0  2932     3     3    26       0        1          0       10       7       10        3       16      4     3      7             20      4
car                   6    10  2813     3     6       8       13          3        1      13       10        3       39      1    11      5             24      4
game                 10    11     6  2843     5       9        2          4        1      11       13        3        8      4    25      3             31      3
food                  0    38     0     3  2799       1        5          1       67      34       16        7        9      3     4      8             14     10
sports                2     7     6    13     6    2803        9          0        1      13       24        5       10      1     5     19             42      4
finance              12    10    13     4    15       6     2692          1        2      21        5        3       18      2    79     47             12      8
discovery             8     2     0     3     3       2        5       1155        1       5        1        1        1      0    13      9              0      1
regimen               0    59     0     0    63       0        2          0     1093       0        3        3        4      2     0      1              5      0
travel                9    19     8     8    23       4        9          8        0    2741       19       20       19      7    13     55             14     12
fashion               2    21     5     9    14       9        1          5       13      18     2772        5        7      1     6     11             77      7
history              49     9     2     3     6       3        3          6        4      28        3     2813       12     20     2     35             21      6
society              27    77    50     7    43       7       42          5       16      78       27       13     2414     29    36     36             58     15
story                 3    17     1     3     7       2        2          2        2       7        5       12       19   1120     4      6             14     11
tech                 16     8    19    21     6       3       52         13        3       6        5        4       14      0  2787      9             17      7
world                52    33    12     8     9      16       33         24        2      35       27       37       50      8    20   2583             30      4
entertainment         5    14     3    28     6      13        4          3        1       9      120       29       17      3    12     10           2708      8
essay                 7    23     5     3    12       1        8          6        4      15       22       11        7      2     5      2             11   1010

#get sub_result and Figure
>>> tc.plot_display(y_test, Y_predict)
>>> Plot display...
               Test count:  Predict count:  Sub Result:  Sub_Abs Result:
baby                  3049            3295          246              246
car                   2973            2949          -24               24
discovery             1210            1246           36               36
entertainment         2993            3104          111              111
essay                 1154            1115          -39               39
fashion               2983            3090          107              107
finance               2950            2891          -59               59
food                  3019            3058           39               39
game                  2992            2978          -14               14
history               3025            2996          -29               29
military              3000            3039           39               39
regimen               1235            1221          -14               14
society               2980            2673         -307              307
sports                2970            2891          -79               79
story                 1237            1210          -27               27
tech                  2990            3031           41               41
travel                2988            3056           68               68
world                 2983            2888          -95               95
Sphinx Neo-Hittite

Installation

$ pip install TextClassifier

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

TextClassifier-0.0.7.0.2.tar.gz (4.8 kB view details)

Uploaded Source

File details

Details for the file TextClassifier-0.0.7.0.2.tar.gz.

File metadata

File hashes

Hashes for TextClassifier-0.0.7.0.2.tar.gz
Algorithm Hash digest
SHA256 f5b80b09320a25efc18889662dc8cf98a5b0ddad1164092a1d8dd2cb98d4a43c
MD5 d469fb0b08ad17e01f57e2be4ec43f59
BLAKE2b-256 3611263d5725687bf95d629d0d733a9268ee948ab090aeb7d5e12e9cdebf0c4e

See more details on using hashes here.

Provenance

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page