Skip to content

Kyushik/Attention

Repository files navigation

Attention

Introduction

This repository is for algorithms of Attention.

The paper I implemented is as follows.

Dataset

This Algorithm will be tested by Modified MNIST dataset Which is made by Jongwon Park.

This modified MNIST dataset is good for verifying attention algorithm.

The example of modified MNIST is as follows.

Combined Image

You can download this modified MNIST data from this link

Training dataset / Testing dataset

Environment

Software

  • Windows7 (64bit)
  • Python 3.5.2
  • Anaconda 4.2.0
  • Tensorflow-gpu 1.4.0

Hardware

  • CPU: Intel(R) Core(TM) i7-4790K CPU @ 4.00GHZ
  • GPU: GeForce GTX 1080
  • Memory: 8GB

Algorithms

Soft Attention

This algorithm is from the paper Show, Attend and Tell: Neural Image Caption Generation with Visual Attention. I studied attention from Heuritech blog.

The attention model for image captioning from paper is as follows. The image is from the Heuritech blog.

Combined Image

For implementing this algorithm, Attention model and LSTM are needed. The code of LSTM is as follows.

# LSTM function
def LSTM_cell(C_prev, h_prev, x_lstm, Wf, Wi, Wc, Wo, bf, bi, bc, bo):
    # C_prev: Cell state from lstm of previous time step (shape: [batch_size, lstm_size])
    # h_prev: output from lstm of previous time step (shape: [batch_size, lstm_size])
    # x_lstm: input of lstm (shape: [batch_size, data_flatten_size])

    input_concat = tf.concat([x_lstm, h_prev], 1)
    f = tf.sigmoid(tf.matmul(input_concat, Wf) + bf)
    i = tf.sigmoid(tf.matmul(input_concat, Wi) + bi)
    c = tf.tanh(tf.matmul(input_concat, Wc) + bc)
    o = tf.sigmoid(tf.matmul(input_concat, Wo) + bo)
    
    C_t = tf.multiply(f, C_prev) + tf.multiply(i, c) 
    h_t = tf.multiply(o, tf.tanh(C_t))
    
    return C_t, h_t # Cell state, Output

Colah's blog post is very good for understanding LSTM and I studied this post to implement LSTM.

Structure image of soft attention model is as follows. Image is from Heuritech blog.

Combined Image

Also, the code of soft attention is as follows.

# Soft Attention function
def soft_attention(h_prev, a, Wa, Wh):
    # h_prev: output from lstm of previous time step (shape: [batch_size, lstm_size])
    # a: Result of CNN [batch_size, conv_size * conv_size, channel_size] 

    m_list = [tf.tanh(tf.matmul(a[i], Wa) + tf.matmul(h_prev, Wh)) for i in range(len(a))] 
    m_concat = tf.concat([m_list[i] for i in range(len(a))], axis = 1)     
    alpha = tf.nn.softmax(m_concat) 
    z_list = [tf.multiply(a[i], tf.slice(alpha, (0, i), (-1, 1))) for i in range(len(a))]
    z_stack = tf.stack(z_list, axis = 2)
    z = tf.reduce_sum(z_stack, axis = 2)

    return alpha, z

After 10 epoch, The training accuracy of LSTM was 94% and validation accuracy was 97%.

Sample images of soft attention result are as follows.

Combined Image

Hard Attention

This algorithm is from the paper Show, Attend and Tell: Neural Image Caption Generation with Visual Attention. Hard Attention architecture image from Heuritech blog is as follows.

Combined Image

The random choice algorithm is Monte-Carlo Sampling. Therefore, I made a code for hard attention as follows.

# Hard Attention function
def hard_attention(h_prev, a, Wa, Wh):
    # h_prev: output from lstm of previous time step (shape: [batch_size, lstm_size])
    # a: Result of CNN [batch_size, conv_size * conv_size, channel_size] 

    m_list = [tf.tanh(tf.matmul(a[i], Wa) + tf.matmul(h_prev, Wh)) for i in range(len(a))] 
    m_concat = tf.concat([m_list[i] for i in range(len(a))], axis = 1)     
    alpha = tf.nn.softmax(m_concat) 
    
    #For Monte-Carlo Sampling
    alpha_cumsum = tf.cumsum(alpha, axis = 1)
    len_batch = tf.shape(alpha_cumsum)[0]
    rand_prob = tf.random_uniform(shape = [len_batch, 1], minval = 0., maxval = 1.)
    alpha_relu = tf.nn.relu(rand_prob - alpha_cumsum)
    alpha_index = tf.count_nonzero(alpha_relu, 1)
    alpha_hard  = tf.one_hot(alpha_index, len(a))

    z_list = [tf.multiply(a[i], tf.slice(alpha_hard, (0, i), (-1, 1))) for i in range(len(a))]
    z_stack = tf.stack(z_list, axis = 2)
    z = tf.reduce_sum(z_stack, axis = 2)

    return alpha, z

After 10 epoch, The training accuracy of LSTM was only 30% and validation accuracy was 33%.

Sample images of hard attention result are as follows.

Combined Image

Releases

No releases published

Packages

No packages published