How can I optimize implementation for recurrent CNN model on sentence classification?












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$begingroup$


I learned how to build recurrent cnn model for text classification and sketched out my initial implementation. However, I am wondering how to transform recurrent cnn model for sentence classification. I am curious how can I come up better implementation of recurrent cnn model for sentence classification task. Here is part of keras solution that I used:



import gensim
import numpy as np
import string
import gensim
from gensim.models import Word2Vec
from gensim.utils import simple_preprocess
from gensim.models.keyedvectors import KeyedVectors

word2vec = KeyedVectors.load_word2vec_format('GoogleNews-vectors-negative300.bin', limit= 500000,binary=True)
embeddings = np.zeros((word2vec.syn0.shape[0] + 1, word2vec.syn0.shape[1]), dtype = "float32")
embeddings[:word2vec.syn0.shape[0]] = word2vec.syn0

MAX_TOKENS = word2vec.syn0.shape[0]
embedding_dim = word2vec.syn0.shape[1]
hidden_dim_1 = 200
hidden_dim_2 = 100
NUM_CLASSES = 10


problem



I want to learn sentence classification task by using recurrent cnn (RCNN) model. The fact that some people used RCNN for object recognition problem. And it is not very intuitive for me how to transform same idea to list of short sentences.



Here is the code that I want to make them work for sentence classification task:



document = Input(shape = (None, ), dtype = "int32")
left_context = Input(shape = (None, ), dtype = "int32")
right_context = Input(shape = (None, ), dtype = "int32")

embedder = Embedding(MAX_TOKENS + 1, embedding_dim, weights = [embeddings], trainable = False)
doc_embedding = embedder(document)
l_embedding = embedder(left_context)
r_embedding = embedder(right_context)


continuation of my code



I am struggling to make above code in problem section for sentence classification problem. Can anyone give me possible idea how to make it work for sentences classification?



If there is efficient transformation on above code, I'd like to continue my pipeline as follow to build RCNN model for sentence classification.



forward = LSTM(hidden_dim_1, return_sequences = True)(l_embedding)
backward = LSTM(hidden_dim_1, return_sequences = True, go_backwards = True)(r_embedding)
backward = Lambda(lambda x: K.reverse(x, axes = 1))(backward)
together = concatenate([forward, doc_embedding, backward], axis = 2)
semantic = Conv1D(hidden_dim_2, kernel_size = 1, activation = "tanh")(together)
pool_rnn = Lambda(lambda x: K.max(x, axis = 1), output_shape = (hidden_dim_2, ))(semantic)
model_output = Dense(NUM_CLASSES, input_dim = hidden_dim_2, activation = "softmax")(pool_rnn)
model_RCNN = Model(inputs = [document, left_context, right_context], outputs = model_output)


maybe I need to tokenize all sentences and create array for right/left context for each sentences, but I didn't get solid idea on that. Any more thoughts?



question



how can I realistically create input matrix for sentences list, right/left context of each sentence? Any workaround to get this done? Any efficient sketch solution to use recurrent cnn model for sentence classification? Thanks in advance!










share|improve this question











$endgroup$

















    0












    $begingroup$


    I learned how to build recurrent cnn model for text classification and sketched out my initial implementation. However, I am wondering how to transform recurrent cnn model for sentence classification. I am curious how can I come up better implementation of recurrent cnn model for sentence classification task. Here is part of keras solution that I used:



    import gensim
    import numpy as np
    import string
    import gensim
    from gensim.models import Word2Vec
    from gensim.utils import simple_preprocess
    from gensim.models.keyedvectors import KeyedVectors

    word2vec = KeyedVectors.load_word2vec_format('GoogleNews-vectors-negative300.bin', limit= 500000,binary=True)
    embeddings = np.zeros((word2vec.syn0.shape[0] + 1, word2vec.syn0.shape[1]), dtype = "float32")
    embeddings[:word2vec.syn0.shape[0]] = word2vec.syn0

    MAX_TOKENS = word2vec.syn0.shape[0]
    embedding_dim = word2vec.syn0.shape[1]
    hidden_dim_1 = 200
    hidden_dim_2 = 100
    NUM_CLASSES = 10


    problem



    I want to learn sentence classification task by using recurrent cnn (RCNN) model. The fact that some people used RCNN for object recognition problem. And it is not very intuitive for me how to transform same idea to list of short sentences.



    Here is the code that I want to make them work for sentence classification task:



    document = Input(shape = (None, ), dtype = "int32")
    left_context = Input(shape = (None, ), dtype = "int32")
    right_context = Input(shape = (None, ), dtype = "int32")

    embedder = Embedding(MAX_TOKENS + 1, embedding_dim, weights = [embeddings], trainable = False)
    doc_embedding = embedder(document)
    l_embedding = embedder(left_context)
    r_embedding = embedder(right_context)


    continuation of my code



    I am struggling to make above code in problem section for sentence classification problem. Can anyone give me possible idea how to make it work for sentences classification?



    If there is efficient transformation on above code, I'd like to continue my pipeline as follow to build RCNN model for sentence classification.



    forward = LSTM(hidden_dim_1, return_sequences = True)(l_embedding)
    backward = LSTM(hidden_dim_1, return_sequences = True, go_backwards = True)(r_embedding)
    backward = Lambda(lambda x: K.reverse(x, axes = 1))(backward)
    together = concatenate([forward, doc_embedding, backward], axis = 2)
    semantic = Conv1D(hidden_dim_2, kernel_size = 1, activation = "tanh")(together)
    pool_rnn = Lambda(lambda x: K.max(x, axis = 1), output_shape = (hidden_dim_2, ))(semantic)
    model_output = Dense(NUM_CLASSES, input_dim = hidden_dim_2, activation = "softmax")(pool_rnn)
    model_RCNN = Model(inputs = [document, left_context, right_context], outputs = model_output)


    maybe I need to tokenize all sentences and create array for right/left context for each sentences, but I didn't get solid idea on that. Any more thoughts?



    question



    how can I realistically create input matrix for sentences list, right/left context of each sentence? Any workaround to get this done? Any efficient sketch solution to use recurrent cnn model for sentence classification? Thanks in advance!










    share|improve this question











    $endgroup$















      0












      0








      0





      $begingroup$


      I learned how to build recurrent cnn model for text classification and sketched out my initial implementation. However, I am wondering how to transform recurrent cnn model for sentence classification. I am curious how can I come up better implementation of recurrent cnn model for sentence classification task. Here is part of keras solution that I used:



      import gensim
      import numpy as np
      import string
      import gensim
      from gensim.models import Word2Vec
      from gensim.utils import simple_preprocess
      from gensim.models.keyedvectors import KeyedVectors

      word2vec = KeyedVectors.load_word2vec_format('GoogleNews-vectors-negative300.bin', limit= 500000,binary=True)
      embeddings = np.zeros((word2vec.syn0.shape[0] + 1, word2vec.syn0.shape[1]), dtype = "float32")
      embeddings[:word2vec.syn0.shape[0]] = word2vec.syn0

      MAX_TOKENS = word2vec.syn0.shape[0]
      embedding_dim = word2vec.syn0.shape[1]
      hidden_dim_1 = 200
      hidden_dim_2 = 100
      NUM_CLASSES = 10


      problem



      I want to learn sentence classification task by using recurrent cnn (RCNN) model. The fact that some people used RCNN for object recognition problem. And it is not very intuitive for me how to transform same idea to list of short sentences.



      Here is the code that I want to make them work for sentence classification task:



      document = Input(shape = (None, ), dtype = "int32")
      left_context = Input(shape = (None, ), dtype = "int32")
      right_context = Input(shape = (None, ), dtype = "int32")

      embedder = Embedding(MAX_TOKENS + 1, embedding_dim, weights = [embeddings], trainable = False)
      doc_embedding = embedder(document)
      l_embedding = embedder(left_context)
      r_embedding = embedder(right_context)


      continuation of my code



      I am struggling to make above code in problem section for sentence classification problem. Can anyone give me possible idea how to make it work for sentences classification?



      If there is efficient transformation on above code, I'd like to continue my pipeline as follow to build RCNN model for sentence classification.



      forward = LSTM(hidden_dim_1, return_sequences = True)(l_embedding)
      backward = LSTM(hidden_dim_1, return_sequences = True, go_backwards = True)(r_embedding)
      backward = Lambda(lambda x: K.reverse(x, axes = 1))(backward)
      together = concatenate([forward, doc_embedding, backward], axis = 2)
      semantic = Conv1D(hidden_dim_2, kernel_size = 1, activation = "tanh")(together)
      pool_rnn = Lambda(lambda x: K.max(x, axis = 1), output_shape = (hidden_dim_2, ))(semantic)
      model_output = Dense(NUM_CLASSES, input_dim = hidden_dim_2, activation = "softmax")(pool_rnn)
      model_RCNN = Model(inputs = [document, left_context, right_context], outputs = model_output)


      maybe I need to tokenize all sentences and create array for right/left context for each sentences, but I didn't get solid idea on that. Any more thoughts?



      question



      how can I realistically create input matrix for sentences list, right/left context of each sentence? Any workaround to get this done? Any efficient sketch solution to use recurrent cnn model for sentence classification? Thanks in advance!










      share|improve this question











      $endgroup$




      I learned how to build recurrent cnn model for text classification and sketched out my initial implementation. However, I am wondering how to transform recurrent cnn model for sentence classification. I am curious how can I come up better implementation of recurrent cnn model for sentence classification task. Here is part of keras solution that I used:



      import gensim
      import numpy as np
      import string
      import gensim
      from gensim.models import Word2Vec
      from gensim.utils import simple_preprocess
      from gensim.models.keyedvectors import KeyedVectors

      word2vec = KeyedVectors.load_word2vec_format('GoogleNews-vectors-negative300.bin', limit= 500000,binary=True)
      embeddings = np.zeros((word2vec.syn0.shape[0] + 1, word2vec.syn0.shape[1]), dtype = "float32")
      embeddings[:word2vec.syn0.shape[0]] = word2vec.syn0

      MAX_TOKENS = word2vec.syn0.shape[0]
      embedding_dim = word2vec.syn0.shape[1]
      hidden_dim_1 = 200
      hidden_dim_2 = 100
      NUM_CLASSES = 10


      problem



      I want to learn sentence classification task by using recurrent cnn (RCNN) model. The fact that some people used RCNN for object recognition problem. And it is not very intuitive for me how to transform same idea to list of short sentences.



      Here is the code that I want to make them work for sentence classification task:



      document = Input(shape = (None, ), dtype = "int32")
      left_context = Input(shape = (None, ), dtype = "int32")
      right_context = Input(shape = (None, ), dtype = "int32")

      embedder = Embedding(MAX_TOKENS + 1, embedding_dim, weights = [embeddings], trainable = False)
      doc_embedding = embedder(document)
      l_embedding = embedder(left_context)
      r_embedding = embedder(right_context)


      continuation of my code



      I am struggling to make above code in problem section for sentence classification problem. Can anyone give me possible idea how to make it work for sentences classification?



      If there is efficient transformation on above code, I'd like to continue my pipeline as follow to build RCNN model for sentence classification.



      forward = LSTM(hidden_dim_1, return_sequences = True)(l_embedding)
      backward = LSTM(hidden_dim_1, return_sequences = True, go_backwards = True)(r_embedding)
      backward = Lambda(lambda x: K.reverse(x, axes = 1))(backward)
      together = concatenate([forward, doc_embedding, backward], axis = 2)
      semantic = Conv1D(hidden_dim_2, kernel_size = 1, activation = "tanh")(together)
      pool_rnn = Lambda(lambda x: K.max(x, axis = 1), output_shape = (hidden_dim_2, ))(semantic)
      model_output = Dense(NUM_CLASSES, input_dim = hidden_dim_2, activation = "softmax")(pool_rnn)
      model_RCNN = Model(inputs = [document, left_context, right_context], outputs = model_output)


      maybe I need to tokenize all sentences and create array for right/left context for each sentences, but I didn't get solid idea on that. Any more thoughts?



      question



      how can I realistically create input matrix for sentences list, right/left context of each sentence? Any workaround to get this done? Any efficient sketch solution to use recurrent cnn model for sentence classification? Thanks in advance!







      deep-learning nlp cnn recurrent-neural-net






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      share|improve this question




      share|improve this question








      edited 2 mins ago







      Dan

















      asked 15 mins ago









      DanDan

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