# HPC-LSTM : Hierarchical Predictive Coding LSTM import theano from theano import tensor import numpy from blocks.bricks import Softmax, Tanh, Logistic, Linear, MLP, Identity from blocks.bricks.recurrent import LSTM from blocks.initialization import IsotropicGaussian, Constant from blocks.filter import VariableFilter from blocks.roles import WEIGHT from blocks.graph import ComputationGraph, apply_noise, apply_dropout class Model(): def __init__(self, config): inp = tensor.imatrix('bytes') embed = theano.shared(config.embedding_matrix.astype(theano.config.floatX), name='embedding_matrix') in_repr = embed[inp.flatten(), :].reshape((inp.shape[0], inp.shape[1], config.repr_dim)) in_repr.name = 'in_repr' bricks = [] states = [] # Construct predictive LSTM hierarchy hidden = [] costs = [] next_target = in_repr.dimshuffle(1, 0, 2) for i, (hdim, cf, q) in enumerate(zip(config.hidden_dims, config.cost_factors, config.hidden_q)): init_state = theano.shared(numpy.zeros((config.num_seqs, hdim)).astype(theano.config.floatX), name='st0_%d'%i) init_cell = theano.shared(numpy.zeros((config.num_seqs, hdim)).astype(theano.config.floatX), name='cell0_%d'%i) linear = Linear(input_dim=config.repr_dim, output_dim=4*hdim, name="lstm_in_%d"%i) lstm = LSTM(dim=hdim, activation=config.activation_function, name="lstm_rec_%d"%i) linear2 = Linear(input_dim=hdim, output_dim=config.repr_dim, name='lstm_out_%d'%i) tanh = Tanh('lstm_out_tanh_%d'%i) bricks += [linear, lstm, linear2, tanh] if i > 0: linear1 = Linear(input_dim=config.hidden_dims[i-1], output_dim=4*hdim, name='lstm_in2_%d'%i) bricks += [linear1] next_target = tensor.cast(next_target, dtype=theano.config.floatX) inter = linear.apply(theano.gradient.disconnected_grad(next_target)) if i > 0: inter += linear1.apply(theano.gradient.disconnected_grad(hidden[-1][:-1,:,:])) new_hidden, new_cells = lstm.apply(inter, states=init_state, cells=init_cell) states.append((init_state, new_hidden[-1, :, :])) states.append((init_cell, new_cells[-1, :, :])) hidden += [tensor.concatenate([init_state[None,:,:], new_hidden],axis=0)] pred = tanh.apply(linear2.apply(hidden[-1][:-1,:,:])) costs += [numpy.float32(cf) * (-next_target * pred).sum(axis=2).mean()] costs += [numpy.float32(cf) * q * abs(pred).sum(axis=2).mean()] diff = next_target - pred next_target = tensor.ge(diff, 0.5) - tensor.le(diff, -0.5) # Construct output from hidden states hidden = [s.dimshuffle(1, 0, 2) for s in hidden] out_parts = [] out_dims = config.out_hidden + [config.io_dim] for i, (dim, state) in enumerate(zip(config.hidden_dims, hidden)): pred_linear = Linear(input_dim=dim, output_dim=out_dims[0], name='pred_linear_%d'%i) bricks.append(pred_linear) lin = theano.gradient.disconnected_grad(state) out_parts.append(pred_linear.apply(lin)) # Do prediction and calculate cost out = sum(out_parts) if len(out_dims) > 1: out = config.out_hidden_act[0](name='out_act0').apply(out) mlp = MLP(dims=out_dims, activations=[x(name='out_act%d'%i) for i, x in enumerate(config.out_hidden_act[1:])] +[Identity()], name='out_mlp') bricks.append(mlp) out = mlp.apply(out.reshape((inp.shape[0]*(inp.shape[1]+1),-1)) ).reshape((inp.shape[0],inp.shape[1]+1,-1)) pred = out.argmax(axis=2) cost = Softmax().categorical_cross_entropy(inp.flatten(), out[:,:-1,:].reshape((inp.shape[0]*inp.shape[1], config.io_dim))).mean() error_rate = tensor.neq(inp.flatten(), pred[:,:-1].flatten()).mean() sgd_cost = cost + sum(costs) # Initialize all bricks for brick in bricks: brick.weights_init = IsotropicGaussian(0.1) brick.biases_init = Constant(0.) brick.initialize() # put stuff into self that is usefull for training or extensions self.sgd_cost = sgd_cost sgd_cost.name = 'sgd_cost' for i in range(len(costs)): costs[i].name = 'pred_cost_%d'%i cost.name = 'cost' error_rate.name = 'error_rate' self.monitor_vars = [costs, [cost], [error_rate]] self.out = out[:,1:,:] self.pred = pred[:,1:] self.states = states # vim: set sts=4 ts=4 sw=4 tw=0 et :