6

I am trying to get the SequenceGAN (https://github.com/LantaoYu/SeqGAN) from https://arxiv.org/pdf/1609.05473.pdf to run.
After fixing the obvious errors, like replacing pack with stack, it still doesn't run, since the highway-network part requires the tf.nn.rnn_cell._linear function:

# highway layer that borrowed from https://github.com/carpedm20/lstm-char-cnn-tensorflow
def highway(input_, size, layer_size=1, bias=-2, f=tf.nn.relu):
    """Highway Network (cf. http://arxiv.org/abs/1505.00387).

    t = sigmoid(Wy + b)
    z = t * g(Wy + b) + (1 - t) * y
    where g is nonlinearity, t is transform gate, and (1 - t) is carry gate.
    """
    output = input_
    for idx in range(layer_size):
        output = f(tf.nn.rnn_cell._linear(output, size, 0, scope='output_lin_%d' % idx)) #tf.contrib.layers.linear instad doesn't work either.
        transform_gate = tf.sigmoid(tf.nn.rnn_cell._linear(input_, size, 0, scope='transform_lin_%d' % idx) + bias)
        carry_gate = 1. - transform_gate

        output = transform_gate * output + carry_gate * input_

    return output

the tf.nn.rnn_cell._linear function doesn't appear to be there anymore in Tensorflow 1.0 or 0.12, and I have no clue what to replace it with. I can't find any new implementations of this, or any information on tensorflow's github or (unfortunately very sparse) documentation.

Does anybody know the new pendant of the function? Thanks a lot in advance!

  • why doesn't tf.contrib.layers.linear work for you? – Eugene Brevdo Feb 28 '17 at 16:50
  • Is this function still contained in tf1.8? – Sören Sep 17 '18 at 21:54
4

I met this error while using SkFlow's TensorFlowDNNRegressor. The first time I saw the answer of ruoho ruots, I am a bit confused. But the next day I realized what he meant.

Here is what I do:

from tensorflow.python.ops import rnn_cell_impl

replace tf.nn.rnn_cell._linear with rnn_cell_impl._linear

| improve this answer | |
2

The answer of ruoho ruotsi is almost correct: Yet, the definition of linear is not located in tf.contrib.rnn.basicRNNCell, but in tf.contrib.rnn.python.ops.rnn_cell, or tf.contrib.rnn.python.ops.core_rnn_cell_impl, respectively.

You can find their source code here and here.

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  • Not in version 1.2 – Escachator Oct 5 '17 at 10:44
  • This was valid for versions 1.0 and 1.1 only. They (at that time) said they would move the functions to other places in a later release, which is probably what happened in 1.2 – dennlinger Nov 30 '17 at 21:38
2

With version 1.0, stuff has moved all around. I've had similar hunts updating tf.nn.rnn_cell.LSTMCell to tf.contrib.rnn.BasicLSTMCell.

For your case tf.nn.rnn_cell._linear now lives in tf.contrib.rnn.python.ops.core_rnn_cell_impl as well as the definition of the BasicRNNCell. Checking the BasicRNNCell docs and source code, we see at L113-L118 the use of _linear.

  def __call__(self, inputs, state, scope=None):
    """Most basic RNN: output = new_state = act(W * input + U * state + B)."""
    with _checked_scope(self, scope or "basic_rnn_cell", reuse=self._reuse):
      output = self._activation(
          _linear([inputs, state], self._num_units, True))
    return output, output

the _linear method is defined at line 854 as a:
Linear map: sum_i(args[i] * W[i]), where W[i] is a variable.

Good luck!

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  • I tried this solution on v 1.0 but got AttributeError: type object 'BasicRNNCell' has no attribute '_linear' – Majid Alfifi Mar 22 '17 at 1:03
  • 1
    It is actually defined in another file. Please see my answer for the correct code location. – dennlinger Mar 24 '17 at 14:16
  • I referenced the tf.contrib.rnn.python.ops.core_rnn_cell_impl but you're right, I wasn't clear that the BasicRNNCell and linear both live in this file. github.com/tensorflow/tensorflow/blob/master/tensorflow/contrib/… Good catch. I'll update my Answer. – ruoho ruotsi Mar 24 '17 at 15:47
1

To solving this problem,we can define a linear() function.

def linear(input_, output_size, scope=None):
    '''
    Linear map: output[k] = sum_i(Matrix[k, i] * args[i] ) + Bias[k]
    Args:
        args: a tensor or a list of 2D, batch x n, Tensors.
    output_size: int, second dimension of W[i].
    scope: VariableScope for the created subgraph; defaults to "Linear".
    Returns:
    A 2D Tensor with shape [batch x output_size] equal to
    sum_i(args[i] * W[i]), where W[i]s are newly created matrices.
    Raises:
    ValueError: if some of the arguments has unspecified or wrong shape.
    '''

    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]

    # Now the computation.
    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'):
    """Highway Network (cf. http://arxiv.org/abs/1505.00387).
    t = sigmoid(Wy + b)
    z = t * g(Wy + b) + (1 - t) * y
    where g is nonlinearity, t is transform gate, and (1 - t) is carry gate.
    """

    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

https://github.com/mkroutikov/tf-lstm-char-cnn/blob/7e899e6992cbf9a96e6d791e5d364eaaeec339a2/model.py

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1

tensorflow.python.ops.rnn_cell_impl._linear now is at tensorflow.contrib.rnn.python.ops.core_rnn_cell._linear. And I prefer to use tf.layers.Dense to replace. for example, change

from tensorflow.contrib.rnn.python.ops import core_rnn_cell
core_rnn_cell._linear(states, length, bias=True)

to

tf.layers.Dense(units=length)(states)

I'm using tensorflow 1.6.

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1

Right now when you what to use _linear function, please use it like this:

from tensorflow.contrib.rnn.python.ops import core_rnn_cell

core_rnn_cell._linear(output, size)

Here is the link of its corresponding source file. source file

This is because after tf r1.5, the location of this function is changed.

When you are using tf r1.4 or even older version, please use it like this:

from tensorflow.python.ops import rnn_cell_impl

rnn_cell_impl._linear(output, size)

Here is the link of this older version of _linear. source file

As for tf.nn.rnn_cell._linear, this function is not available a long time ago.

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  • For tensorflow version 1.15 this is what worked for me! – Thava May 15 at 15:20
0

As for now (1.2r0) you can replace it with tf.contrib.layers.fully_connected(inputs=[inputs, state], num_outputs=self._num_units, biases_initializer=tf.constant_initializer(0.0), activation_fn=None) Note that biases_initializer defaults to all zeros for _linear and for no bias at all for fully_connected.

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0

Use rnn_cell.LayerNormBasicLSTMCell._linear instead of _linear

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