示例#1
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def get_timing_signal_1d_given_position(channels,
                                        position,
                                        min_timescale=1.0,
                                        max_timescale=1.0e4):
    """Get sinusoids of diff frequencies, with timing position given.

  Adapted from add_timing_signal_1d_given_position in
  //third_party/py/tensor2tensor/layers/common_attention.py

  Args:
    channels: scalar, size of timing embeddings to create. The number of
        different timescales is equal to channels / 2.
    position: a Tensor with shape [batch, seq_len]
    min_timescale: a float
    max_timescale: a float

  Returns:
    a Tensor of timing signals [batch, seq_len, channels]
  """
    num_timescales = channels // 2
    log_timescale_increment = (
        math.log(float(max_timescale) / float(min_timescale)) /
        (tf.to_float(num_timescales) - 1))
    inv_timescales = min_timescale * tf.exp(
        tf.to_float(tf.range(num_timescales)) * -log_timescale_increment)
    scaled_time = (tf.expand_dims(tf.to_float(position), 2) *
                   tf.expand_dims(tf.expand_dims(inv_timescales, 0), 0))
    signal = tf.concat([tf.sin(scaled_time), tf.cos(scaled_time)], axis=2)
    signal = tf.pad(signal, [[0, 0], [0, 0], [0, tf.mod(channels, 2)]])
    return signal
示例#2
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文件: uda.py 项目: zhongyunuestc/unif
def get_tsa_threshold(tsa_schedule, global_step, num_train_steps, start, end):
    training_progress = tf.to_float(global_step) / tf.to_float(num_train_steps)
    if tsa_schedule == 'linear':
        threshold = training_progress
    elif tsa_schedule == 'exp':
        scale = 5
        threshold = tf.exp((training_progress - 1) * scale)
        # [exp(-5), exp(0)] = [1e-2, 1]
    elif tsa_schedule == 'log':
        scale = 5
        # [1 - exp(0), 1 - exp(-5)] = [0, 0.99]
        threshold = 1 - tf.exp((-training_progress) * scale)
    else:
        raise ValueError(
            'Invalid value for `tsa_schedule`: %s. Pick one from `linear`, '
            '`exp` or `log`.' % (tsa_schedule))
    return threshold * (end - start) + start
示例#3
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    def __init__(self,
                 is_training,
                 input_tensor,
                 label_ids,
                 label_size=2,
                 sample_weight=None,
                 scope='cls/seq_relationship',
                 hidden_dropout_prob=0.1,
                 initializer_range=0.02,
                 trainable=True,
                 **kwargs):
        super().__init__(**kwargs)

        hidden_size = input_tensor.shape.as_list()[-1]
        with tf.variable_scope(scope):
            output_weights = tf.get_variable(
                'output_weights',
                shape=[label_size, hidden_size],
                initializer=util.create_initializer(initializer_range),
                trainable=trainable)
            output_bias = tf.get_variable('output_bias',
                                          shape=[label_size],
                                          initializer=tf.zeros_initializer(),
                                          trainable=trainable)

            output_layer = util.dropout(
                input_tensor, hidden_dropout_prob if is_training else 0.0)
            logits = tf.matmul(output_layer, output_weights, transpose_b=True)
            logits = tf.nn.bias_add(logits, output_bias)

            self.preds['preds'] = tf.argmax(logits, axis=-1)
            self.probs['probs'] = tf.nn.softmax(logits, axis=-1, name='probs')

            log_probs = tf.nn.log_softmax(logits, axis=-1)
            one_hot_labels = tf.one_hot(label_ids,
                                        depth=label_size,
                                        dtype=tf.float32)
            per_example_loss = -tf.reduce_sum(one_hot_labels * log_probs,
                                              axis=-1)
            if sample_weight is not None:
                per_example_loss = tf.cast(sample_weight,
                                           dtype=tf.float32) * per_example_loss
            thresh = kwargs.get('conf_thresh')
            if thresh is not None:
                assert isinstance(
                    thresh,
                    float), ('`conf_thresh` must be a float between 0 and 1.')
                largest_prob = tf.reduce_max(tf.exp(log_probs), axis=-1)
                per_example_loss = tf.cast(
                    tf.less(largest_prob, thresh), dtype=tf.float32) * \
                    per_example_loss

            self.losses['losses'] = per_example_loss
            self.total_loss = tf.reduce_mean(per_example_loss)
示例#4
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def softmax(x, axis=-1):
    x = x - tf.reduce_max(x, axis=axis, keepdims=True)
    ex = tf.exp(x)
    return ex / tf.reduce_sum(ex, axis=axis, keepdims=True)
示例#5
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文件: vae.py 项目: zhongyunuestc/unif
    def __init__(self,
                 vocab_size,
                 is_training,
                 input_ids,
                 input_mask,
                 segment_ids,
                 sample_weight=None,
                 reduced_size=64,
                 topic_size=1024,
                 hidden_size=768,
                 num_hidden_layers=12,
                 num_attention_heads=12,
                 bias=0,
                 scope='vae',
                 trainable=True,
                 **kwargs):
        super().__init__()

        # freeze parameters
        config = Config(vocab_size,
                        hidden_size=hidden_size,
                        num_hidden_layers=num_hidden_layers,
                        num_attention_heads=num_attention_heads)
        if not is_training:
            config.hidden_dropout_prob = 0.0
            config.attention_probs_dropout_prob = 0.0

        input_shape = util.get_shape_list(input_ids, expected_rank=2)
        batch_size = input_shape[0]
        seq_length = input_shape[1]

        # Tilda embeddings for SMART algorithm
        tilda_embeddings = None
        use_tilda_embedding = kwargs.get('use_tilda_embedding')
        if use_tilda_embedding:
            with tf.variable_scope('', reuse=True):
                tilda_embeddings = tf.get_variable('tilda_embeddings')

        with tf.variable_scope(scope):
            with tf.variable_scope('embeddings'):

                (self.embedding_output, self.embedding_table) = \
                    self.embedding_lookup(
                        input_ids=input_ids,
                        vocab_size=config.vocab_size,
                        batch_size=batch_size,
                        max_seq_length=seq_length,
                        embedding_size=config.hidden_size,
                        initializer_range=config.initializer_range,
                        word_embedding_name='word_embeddings',
                        tilda_embeddings=tilda_embeddings,
                        trainable=trainable)
                self.embedding_output = self.embedding_postprocessor(
                    input_tensor=self.embedding_output,
                    batch_size=batch_size,
                    max_seq_length=seq_length,
                    hidden_size=config.hidden_size,
                    use_token_type=True,
                    segment_ids=segment_ids,
                    token_type_vocab_size=config.type_vocab_size,
                    token_type_embedding_name='token_type_embeddings',
                    use_position_embeddings=True,
                    position_embedding_name='position_embeddings',
                    initializer_range=config.initializer_range,
                    max_position_embeddings=config.max_position_embeddings,
                    dropout_prob=config.hidden_dropout_prob,
                    trainable=trainable)

            with tf.variable_scope('encoder'):

                # stacked transformer
                attention_mask = self.create_attention_mask_from_input_mask(
                    input_mask, batch_size, seq_length)
                self.all_encoder_layers = self.transformer_model(
                    input_tensor=self.embedding_output,
                    batch_size=batch_size,
                    max_seq_length=seq_length,
                    attention_mask=attention_mask,
                    hidden_size=config.hidden_size,
                    num_hidden_layers=config.num_hidden_layers,
                    num_attention_heads=config.num_attention_heads,
                    intermediate_size=config.intermediate_size,
                    intermediate_act_fn=util.get_activation(config.hidden_act),
                    hidden_dropout_prob=config.hidden_dropout_prob,
                    attention_probs_dropout_prob=\
                        config.attention_probs_dropout_prob,
                    initializer_range=config.initializer_range,
                    trainable=trainable)

                # projection
                with tf.variable_scope('projection'):
                    transformer_output = tf.layers.dense(
                        self.all_encoder_layers[-1],
                        reduced_size,
                        activation=util.gelu,
                        kernel_initializer=tf.truncated_normal_initializer(
                            stddev=config.initializer_range),
                        trainable=trainable)
                    transformer_output = tf.reshape(transformer_output,
                                                    [batch_size, -1])
                    input_length = tf.reduce_sum(input_mask, axis=-1)
                    input_length = tf.cast(input_length, tf.float32)
                    input_length_1d = tf.reshape(input_length, [batch_size])
                    input_length_2d = tf.reshape(input_length, [batch_size, 1])

                    broadcast_mask = tf.sequence_mask(
                        tf.multiply(input_length_1d, reduced_size),
                        seq_length * reduced_size,
                        dtype=tf.float32)
                    broadcast_mask = tf.multiply(broadcast_mask,
                                                 seq_length / input_length_2d)
                    transformer_output *= broadcast_mask

                    # latent space
                    miu = tf.layers.dense(
                        transformer_output,
                        topic_size,
                        activation='tanh',
                        kernel_initializer=tf.truncated_normal_initializer(
                            stddev=config.initializer_range),
                        name='miu',
                        trainable=trainable)
                    sigma = tf.layers.dense(
                        transformer_output,
                        topic_size,
                        kernel_initializer=tf.truncated_normal_initializer(
                            stddev=config.initializer_range),
                        name='sigma',
                        trainable=trainable)
                    self.probs['miu'] = miu
                    self.probs['sigma'] = sigma

            with tf.variable_scope('decoder'):
                with tf.variable_scope('projection'):

                    # reparametarization
                    if is_training:
                        noise = tf.random_normal([batch_size, topic_size])
                    else:
                        noise = tf.random_uniform([batch_size, topic_size],
                                                  minval=-bias,
                                                  maxval=bias)
                    decoder_input = miu + tf.exp(sigma) * noise

                    # projection
                    decoder_input = tf.layers.dense(
                        decoder_input,
                        seq_length * reduced_size,
                        activation=util.gelu,
                        kernel_initializer=tf.truncated_normal_initializer(
                            stddev=config.initializer_range),
                        trainable=trainable)
                    intermediate_input = tf.reshape(
                        decoder_input, [-1, seq_length, reduced_size])
                    intermediate_input = util.layer_norm(intermediate_input,
                                                         trainable=trainable)
                    intermediate_input = util.dropout(
                        intermediate_input, config.hidden_dropout_prob)

                # MLP
                with tf.variable_scope('intermediate'):
                    intermediate_output = tf.layers.dense(
                        intermediate_input,
                        4 * reduced_size,
                        activation=util.gelu,
                        kernel_initializer=util.create_initializer(
                            config.initializer_range),
                        trainable=trainable)
                with tf.variable_scope('output'):
                    decoder_output = tf.layers.dense(
                        intermediate_output,
                        config.hidden_size,
                        kernel_initializer=util.create_initializer(
                            config.initializer_range),
                        trainable=trainable)
                    decoder_output = util.layer_norm(decoder_output,
                                                     trainable=trainable)
                    decoder_output = util.dropout(decoder_output,
                                                  config.hidden_dropout_prob)
                self.all_decoder_layers = [intermediate_output, decoder_output]
                self.all_decoder_layers = [decoder_output]

        # reconstruction
        with tf.variable_scope('cls/predictions'):
            with tf.variable_scope('transform'):
                input_tensor = tf.layers.dense(
                    decoder_output,
                    units=config.hidden_size,
                    activation=util.get_activation(config.hidden_act),
                    kernel_initializer=util.create_initializer(
                        config.initializer_range),
                    trainable=trainable)
                input_tensor = util.layer_norm(input_tensor,
                                               trainable=trainable)
            output_weights = self.embedding_table
            output_bias = tf.get_variable('output_bias',
                                          shape=[config.vocab_size],
                                          initializer=tf.zeros_initializer(),
                                          trainable=trainable)
            flatten_input_tensor = tf.reshape(input_tensor,
                                              [-1, config.hidden_size])

            logits = tf.matmul(flatten_input_tensor,
                               output_weights,
                               transpose_b=True)
            logits = tf.nn.bias_add(logits, output_bias)

            logits = tf.reshape(logits,
                                [batch_size, seq_length, config.vocab_size])
            probs = tf.nn.softmax(logits, axis=-1, name='probs')
            lm_log_probs = tf.nn.log_softmax(logits, axis=-1)

            self.preds['preds'] = tf.argmax(probs, axis=-1)
            one_hot_labels = tf.one_hot(input_ids,
                                        depth=config.vocab_size,
                                        dtype=tf.float32)
            per_example_loss = -tf.reduce_sum(lm_log_probs * one_hot_labels,
                                              axis=[-1])
            if sample_weight is not None:
                per_example_loss *= tf.expand_dims(sample_weight, axis=-1)

            self.total_loss = (tf.reduce_mean(per_example_loss) +
                               tf.reduce_mean(tf.square(miu)) +
                               tf.reduce_mean(tf.exp(sigma) - sigma - 1))
            self.losses['losses'] = per_example_loss
示例#6
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文件: uda.py 项目: zhongyunuestc/unif
    def __init__(self,
                 is_training,
                 input_tensor,
                 is_supervised,
                 is_expanded,
                 label_ids,
                 label_size=2,
                 sample_weight=None,
                 scope='cls/seq_relationship',
                 hidden_dropout_prob=0.1,
                 initializer_range=0.02,
                 trainable=True,
                 global_step=None,
                 num_train_steps=None,
                 uda_softmax_temp=-1,
                 uda_confidence_thresh=-1,
                 tsa_schedule='linear',
                 **kwargs):
        super().__init__(**kwargs)

        is_supervised = tf.cast(is_supervised, tf.float32)
        is_expanded = tf.cast(is_expanded, tf.float32)

        hidden_size = input_tensor.shape.as_list()[-1]
        with tf.variable_scope(scope):
            output_weights = tf.get_variable(
                'output_weights',
                shape=[label_size, hidden_size],
                initializer=util.create_initializer(initializer_range),
                trainable=trainable)
            output_bias = tf.get_variable('output_bias',
                                          shape=[label_size],
                                          initializer=tf.zeros_initializer(),
                                          trainable=trainable)

            output_layer = util.dropout(
                input_tensor, hidden_dropout_prob if is_training else 0.0)
            logits = tf.matmul(output_layer, output_weights, transpose_b=True)
            logits = tf.nn.bias_add(logits, output_bias)
            log_probs = tf.nn.log_softmax(logits, axis=-1)

            with tf.variable_scope('sup_loss'):

                # reshape
                sup_ori_log_probs = tf.boolean_mask(log_probs,
                                                    mask=(1.0 - is_expanded),
                                                    axis=0)
                sup_log_probs = tf.boolean_mask(sup_ori_log_probs,
                                                mask=is_supervised,
                                                axis=0)
                sup_label_ids = tf.boolean_mask(label_ids,
                                                mask=is_supervised,
                                                axis=0)

                self.preds['preds'] = tf.argmax(sup_ori_log_probs, axis=-1)

                one_hot_labels = tf.one_hot(sup_label_ids,
                                            depth=label_size,
                                            dtype=tf.float32)
                per_example_loss = -tf.reduce_sum(
                    one_hot_labels * sup_log_probs, axis=-1)

                loss_mask = tf.ones_like(per_example_loss, dtype=tf.float32)
                correct_label_probs = tf.reduce_sum(one_hot_labels *
                                                    tf.exp(sup_log_probs),
                                                    axis=-1)

                if is_training and tsa_schedule:
                    tsa_start = 1.0 / label_size
                    tsa_threshold = get_tsa_threshold(tsa_schedule,
                                                      global_step,
                                                      num_train_steps,
                                                      tsa_start,
                                                      end=1)

                    larger_than_threshold = tf.greater(correct_label_probs,
                                                       tsa_threshold)
                    loss_mask = loss_mask * (
                        1 - tf.cast(larger_than_threshold, tf.float32))

                loss_mask = tf.stop_gradient(loss_mask)
                per_example_loss = per_example_loss * loss_mask
                if sample_weight is not None:
                    sup_sample_weight = tf.boolean_mask(sample_weight,
                                                        mask=is_supervised,
                                                        axis=0)
                    per_example_loss *= tf.cast(sup_sample_weight,
                                                dtype=tf.float32)
                sup_loss = (tf.reduce_sum(per_example_loss) /
                            tf.maximum(tf.reduce_sum(loss_mask), 1))

                self.losses['supervised'] = per_example_loss

            with tf.variable_scope('unsup_loss'):

                # reshape
                ori_log_probs = tf.boolean_mask(sup_ori_log_probs,
                                                mask=(1.0 - is_supervised),
                                                axis=0)
                aug_log_probs = tf.boolean_mask(log_probs,
                                                mask=is_expanded,
                                                axis=0)
                sup_ori_logits = tf.boolean_mask(logits,
                                                 mask=(1.0 - is_expanded),
                                                 axis=0)
                ori_logits = tf.boolean_mask(sup_ori_logits,
                                             mask=(1.0 - is_supervised),
                                             axis=0)

                unsup_loss_mask = 1
                if uda_softmax_temp != -1:
                    tgt_ori_log_probs = tf.nn.log_softmax(ori_logits /
                                                          uda_softmax_temp,
                                                          axis=-1)
                    tgt_ori_log_probs = tf.stop_gradient(tgt_ori_log_probs)
                else:
                    tgt_ori_log_probs = tf.stop_gradient(ori_log_probs)

                if uda_confidence_thresh != -1:
                    largest_prob = tf.reduce_max(tf.exp(ori_log_probs),
                                                 axis=-1)
                    unsup_loss_mask = tf.cast(
                        tf.greater(largest_prob, uda_confidence_thresh),
                        tf.float32)
                    unsup_loss_mask = tf.stop_gradient(unsup_loss_mask)

                per_example_loss = kl_for_log_probs(
                    tgt_ori_log_probs, aug_log_probs) * unsup_loss_mask
                if sample_weight is not None:
                    unsup_sample_weight = tf.boolean_mask(sample_weight,
                                                          mask=(1.0 -
                                                                is_supervised),
                                                          axis=0)
                    per_example_loss *= tf.cast(unsup_sample_weight,
                                                dtype=tf.float32)
                unsup_loss = tf.reduce_mean(per_example_loss)

                self.losses['unsupervised'] = per_example_loss

            self.total_loss = sup_loss + unsup_loss
示例#7
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文件: uda.py 项目: zhongyunuestc/unif
def kl_for_log_probs(log_p, log_q):
    p = tf.exp(log_p)
    neg_ent = tf.reduce_sum(p * log_p, axis=-1)
    neg_cross_ent = tf.reduce_sum(p * log_q, axis=-1)
    kl = neg_ent - neg_cross_ent
    return kl