import tensorflow as tf import numpy as np class MiLSTMCell(tf.nn.rnn_cell.RNNCell): def __init__(self, num_units, forget_bias = 1.0, input_size = None, state_is_tuple = True, activation = tf.tanh, reuse = None): self.numUnits = num_units self.forgetBias = forget_bias self.activation = activation self.reuse = reuse @property def state_size(self): return tf.nn.rnn_cell.LSTMStateTuple(self.numUnits, self.numUnits) @property def output_size(self): return self.numUnits def mulWeights(self, inp, inDim, outDim, name = ""): with tf.variable_scope("weights" + name): W = tf.get_variable("weights", shape = (inDim, outDim), initializer = tf.contrib.layers.xavier_initializer()) output = tf.matmul(inp, W) return output def addBiases(self, inp1, inp2, dim, name = ""): with tf.variable_scope("additiveBiases" + name): b = tf.get_variable("biases", shape = (dim,), initializer = tf.zeros_initializer()) with tf.variable_scope("multiplicativeBias" + name): beta = tf.get_variable("biases", shape = (3 * dim,), initializer = tf.ones_initializer()) Wx, Uh, inter = tf.split(beta * tf.concat([inp1, inp2, inp1 * inp2], axis = 1), num_or_size_splits = 3, axis = 1) output = Wx + Uh + inter + b return output def __call__(self, inputs, state, scope = None): scope = scope or type(self).__name__ with tf.variable_scope(scope, reuse = self.reuse): c, h = state inputSize = int(inputs.shape[1]) Wx = self.mulWeights(inputs, inputSize, self.numUnits, name = "Wxi") Uh = self.mulWeights(h, self.numUnits, self.numUnits, name = "Uhi") i = self.addBiases(Wx, Uh, self.numUnits, name = "i") Wx = self.mulWeights(inputs, inputSize, self.numUnits, name = "Wxj") Uh = self.mulWeights(h, self.numUnits, self.numUnits, name = "Uhj") j = self.addBiases(Wx, Uh, self.numUnits, name = "l") Wx = self.mulWeights(inputs, inputSize, self.numUnits, name = "Wxf") Uh = self.mulWeights(h, self.numUnits, self.numUnits, name = "Uhf") f = self.addBiases(Wx, Uh, self.numUnits, name = "f") Wx = self.mulWeights(inputs, inputSize, self.numUnits, name = "Wxo") Uh = self.mulWeights(h, self.numUnits, self.numUnits, name = "Uho") o = self.addBiases(Wx, Uh, self.numUnits, name = "o") # i, j, f, o = tf.split(value = concat, num_or_size_splits = 4, axis = 1) newC = (c * tf.nn.sigmoid(f + self.forgetBias) + tf.nn.sigmoid(i) * self.activation(j)) newH = self.activation(newC) * tf.nn.sigmoid(o) newState = tf.nn.rnn_cell.LSTMStateTuple(newC, newH) return newH, newState def zero_state(self, batchSize, dtype = tf.float32): return tf.nn.rnn_cell.LSTMStateTuple(tf.zeros((batchSize, self.numUnits), dtype = dtype), tf.zeros((batchSize, self.numUnits), dtype = dtype))