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discriminator_WGAN.py
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discriminator_WGAN.py
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import tensorflow as tf
def linear(input_, output_size, scope=None):
shape = input_.get_shape().as_list()
if len(shape) != 2:
raise ValueError("Linear is expecting 2D arguments: %s" % str(shape))
if not shape[1]:
raise ValueError("Linear expects shape[1] of arguments: %s" % str(shape))
input_size = shape[1]
with tf.variable_scope(scope or "SimpleLinear"):
matrix = tf.get_variable("Matrix", [output_size, input_size], dtype=input_.dtype)
bias_term = tf.get_variable("Bias", [output_size], dtype=input_.dtype)
return tf.matmul(input_, tf.transpose(matrix)) + bias_term
def highway(input_, size, num_layers=1, bias=-2.0, f=tf.nn.relu, scope='Highway'):
with tf.variable_scope(scope):
for idx in range(num_layers):
g = f(linear(input_, size, scope='highway_lin_%d' % idx))
t = tf.sigmoid(linear(input_, size, scope='highway_gate_%d' % idx) + bias)
output = t * g + (1. - t) * input_
input_ = output
return output
class Discriminator(object):
def __init__(
self, sequence_length, num_classes, vocab_size,
embedding_size, filter_sizes, num_filters, l2_reg_lambda=0.0):
self.input_x = tf.placeholder(tf.int32, [None, sequence_length], name="input_x")
self.input_y = tf.placeholder(tf.float32, [None, num_classes], name="input_y")
self.dropout_keep_prob = tf.placeholder(tf.float32, name="dropout_keep_prob")
l2_loss = tf.constant(0.0)
with tf.variable_scope('discriminator'):
with tf.device('/cpu:0'), tf.name_scope("embedding"):
self.W = tf.Variable(
tf.random_uniform([vocab_size, embedding_size], -1.0, 1.0),
name="W")
self.embedded_chars = tf.nn.embedding_lookup(self.W, self.input_x)
self.embedded_chars_expanded = tf.expand_dims(self.embedded_chars, -1)
with tf.name_scope("dropout_2"):
self.embedded_chars_expanded = tf.nn.dropout(self.embedded_chars_expanded, 0.8)
pooled_outputs = []
skip_bn = True
for filter_size, num_filter in zip(filter_sizes, num_filters):
with tf.name_scope("conv-maxpool-%s" % filter_size):
# Convolution Layer
filter_shape = [filter_size, embedding_size, 1, num_filter]
W = tf.Variable(tf.truncated_normal(filter_shape, stddev=0.1), name="W")
b = tf.Variable(tf.constant(0.1, shape=[num_filter]), name="b")
conv = tf.nn.conv2d(
self.embedded_chars_expanded,
W,
strides=[1, 1, 1, 1],
padding="VALID",
name="conv")
if skip_bn:
skip_bn=False
else:
conv = tf.layers.batch_normalization(conv)
h = tf.nn.relu(tf.nn.bias_add(conv, b), name="relu")
pooled = tf.nn.max_pool(
h,
ksize=[1, sequence_length - filter_size + 1, 1, 1],
strides=[1, 1, 1, 1],
padding='VALID',
name="pool")
pooled_outputs.append(pooled)
num_filters_total = sum(num_filters)
self.h_pool = tf.concat(pooled_outputs, 3)
self.h_pool_flat = tf.reshape(self.h_pool, [-1, num_filters_total])
with tf.name_scope("highway"):
self.h_highway = highway(self.h_pool_flat, self.h_pool_flat.get_shape()[1], 1, 0)
with tf.name_scope("dropout"):
self.h_drop = tf.nn.dropout(self.h_highway, 0.5)
with tf.name_scope("output"):
W = tf.Variable(tf.truncated_normal([num_filters_total, num_classes], stddev=0.1), name="W")
b = tf.Variable(tf.constant(0.1, shape=[num_classes]), name="b")
l2_loss += tf.nn.l2_loss(W)
l2_loss += tf.nn.l2_loss(b)
self.scores = tf.nn.xw_plus_b(self.h_drop, W, b, name="scores")
self.ypred_for_auc = self.scores
self.predictions = tf.argmax(self.scores, 1, name="predictions")
logits_real = self.scores[self.input_y == [0, 1],:]
logits_fake = self.scores[self.input_y == [1, 0],:]
with tf.name_scope("loss"):
losses = tf.reduce_mean(logits_real) - tf.reduce_mean(logits_fake)
self.loss = losses + l2_reg_lambda * l2_loss
self.params = [param for param in tf.trainable_variables() if 'discriminator' in param.name]
d_optimizer = tf.train.RMSPropOptimizer(0.00005)
grads_and_vars = d_optimizer.compute_gradients(self.loss, self.params, aggregation_method=2)
self.train_op = d_optimizer.apply_gradients(grads_and_vars)
self.params_clip = [var.assign(tf.clip_by_value(var, -0.01, 0.01)) for var in self.params]