Skip to main content

Train the Bi-LM model and use it as a feature extraction method

Project description

Keras Bi-LM

Travis Coverage

Introduction

The repository contains a class for training a bidirectional language model that extracts features for each position in a sentence.

Install

pip install keras-bi-lm

Usage

Train and save the Bi-LM model

Before using it as a feature extraction method, the language model must be trained on a large corpora.

from keras_bi_lm import BiLM

sentences = [
    ['All', 'work', 'and', 'no', 'play'],
    ['makes', 'Jack', 'a', 'dull', 'boy', '.'],
]
token_dict = {
    '': 0, '<UNK>': 1, '<EOS>': 2,
    'all': 3, 'work': 4, 'and': 5, 'no': 6, 'play': 7,
    'makes': 8, 'a': 9, 'dull': 10, 'boy': 11, '.': 12,
}
token_dict_rev = {v: k for k, v in token_dict.items()}
inputs, outputs = BiLM.get_batch(sentences,
                                 token_dict,
                                 ignore_case=True,
                                 unk_index=token_dict['<UNK>'],
                                 eos_index=token_dict['<EOS>'])

bi_lm = BiLM(token_num=len(token_dict), embedding_dim=10, rnn_units=10)
bi_lm.model.summary()
bi_lm.fit(np.repeat(inputs, 2 ** 12, axis=0),
          [
              np.repeat(outputs[0], 2 ** 12, axis=0),
              np.repeat(outputs[1], 2 ** 12, axis=0),
          ],
          epochs=5)
bi_lm.save_model('bi_lm.h5')

BiLM()

The core class that contains the model to be trained and used. Key parameters:

  • token_num: Number of words or characters.
  • embedding_dim: The dimension of embedding layer.
  • rnn_layer_num: The number of stacked bidirectional RNNs.
  • rnn_units: An integer or a list representing the number of units of RNNs in one direction.
  • rnn_keep_num: How many layers are used for predicting the probabilities of the next word.
  • rnn_type: Type of RNN, 'gru' or 'lstm'.

BiLM.get_batch()

A helper function that converts sentences to batch inputs and outputs for training the model.

  • sentences: A list of list of tokens.
  • token_dict: The dict that maps a token to an integer. <UNK> and <EOS> should be preserved.
  • ignore_case: Whether ignoring the case of the token.
  • unk_index: The index for unknown token.
  • eos_index: The index for ending of sentence.

Load and use the Bi-LM model

from keras_bi_lm import BiLM

bi_lm = BiLM(model_path='bi_lm.h5')  # or `bi_lm.load_model('bi_lm.h5')`
input_layer, output_layer = bi_lm.get_feature_layers()
model = keras.models.Model(inputs=input_layer, outputs=output_layer)
model.summary()

The output_layer is the time-distributed feature and all the parameters in the layers of the model are not trainable.

Use ELMo-like Weighted Sum of Trained Layers

from keras_bi_lm import BiLM

bi_lm = BiLM(token_num=20000,
             embedding_dim=300,
             rnn_layer_num=3,
             rnn_keep_num=4,
             rnn_units=300,
             rnn_type='lstm',
             use_normalization=True)
# ...
# Train the Bi-LM model
# ...

input_layer, output_layer = bi_lm.get_feature_layers(use_weighted_sum=True)
model = keras.models.Model(inputs=input_layer, outputs=output_layer)
model.summary()

When rnn_keep_num is greater than rnn_layer_num, the embedding layer is also used for weighting.

Demo

See demo directory:

cd demo
./get_data.sh
pip install -r requirements.txt
python setiment_analysis.py

Citation

Just cite the paper you've seen.

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

keras-bi-lm-0.23.0.tar.gz (6.5 kB view details)

Uploaded Source

File details

Details for the file keras-bi-lm-0.23.0.tar.gz.

File metadata

  • Download URL: keras-bi-lm-0.23.0.tar.gz
  • Upload date:
  • Size: 6.5 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/1.12.1 pkginfo/1.4.2 requests/2.20.1 setuptools/40.7.1 requests-toolbelt/0.8.0 tqdm/4.24.0 CPython/3.6.4

File hashes

Hashes for keras-bi-lm-0.23.0.tar.gz
Algorithm Hash digest
SHA256 b505570109c238baea4b04de63874dfbdf4af18328eba47a95bb459681237a8e
MD5 4caff4681d43058170ce24dae6e8e03b
BLAKE2b-256 e71ad5fd23328e932d0d28b0582affb6fdf8d479e8243b79e6bf43f675d3210c

See more details on using hashes here.

Supported by

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