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nn.py
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nn.py
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"""
neural network stuff, intended to be used with Lasagne
"""
import numpy as np
import theano as th
import theano.tensor as T
import lasagne
from lasagne.layers import dnn
from theano.sandbox.rng_mrg import MRG_RandomStreams as RandomStreams
# T.nnet.relu has some stability issues, this is better
def relu(x):
return T.maximum(x, 0)
def lrelu(x, a=0.2):
return T.maximum(x, a*x)
def centered_softplus(x):
return T.nnet.softplus(x) - np.cast[th.config.floatX](np.log(2.))
def log_sum_exp(x, axis=1):
m = T.max(x, axis=axis)
return m+T.log(T.sum(T.exp(x-m.dimshuffle(0,'x')), axis=axis))
def adam_updates(params, cost, lr=0.001, mom1=0.9, mom2=0.999):
updates = []
grads = T.grad(cost, params)
t = th.shared(np.cast[th.config.floatX](1.))
for p, g in zip(params, grads):
v = th.shared(np.cast[th.config.floatX](p.get_value() * 0.))
mg = th.shared(np.cast[th.config.floatX](p.get_value() * 0.))
v_t = mom1*v + (1. - mom1)*g
mg_t = mom2*mg + (1. - mom2)*T.square(g)
v_hat = v_t / (1. - mom1 ** t)
mg_hat = mg_t / (1. - mom2 ** t)
g_t = v_hat / T.sqrt(mg_hat + 1e-8)
p_t = p - lr * g_t
updates.append((v, v_t))
updates.append((mg, mg_t))
updates.append((p, p_t))
updates.append((t, t+1))
return updates
class WeightNormLayer(lasagne.layers.Layer):
def __init__(self, incoming, b=lasagne.init.Constant(0.), g=lasagne.init.Constant(1.),
W=lasagne.init.Normal(0.05), train_g=False, init_stdv=1., nonlinearity=relu, **kwargs):
super(WeightNormLayer, self).__init__(incoming, **kwargs)
self.nonlinearity = nonlinearity
self.init_stdv = init_stdv
k = self.input_shape[1]
if b is not None:
self.b = self.add_param(b, (k,), name="b", regularizable=False)
if g is not None:
self.g = self.add_param(g, (k,), name="g", regularizable=False, trainable=train_g)
if len(self.input_shape)==4:
self.axes_to_sum = (0,2,3)
self.dimshuffle_args = ['x',0,'x','x']
else:
self.axes_to_sum = 0
self.dimshuffle_args = ['x',0]
# scale weights in layer below
incoming.W_param = incoming.W
#incoming.W_param.set_value(W.sample(incoming.W_param.get_value().shape))
if incoming.W_param.ndim==4:
if isinstance(incoming, Deconv2DLayer):
W_axes_to_sum = (0,2,3)
W_dimshuffle_args = ['x',0,'x','x']
else:
W_axes_to_sum = (1,2,3)
W_dimshuffle_args = [0,'x','x','x']
else:
W_axes_to_sum = 0
W_dimshuffle_args = ['x',0]
if g is not None:
incoming.W = incoming.W_param * (self.g/T.sqrt(1e-6 + T.sum(T.square(incoming.W_param),axis=W_axes_to_sum))).dimshuffle(*W_dimshuffle_args)
else:
incoming.W = incoming.W_param / T.sqrt(1e-6 + T.sum(T.square(incoming.W_param),axis=W_axes_to_sum,keepdims=True))
def get_output_for(self, input, init=False, **kwargs):
if init:
m = T.mean(input, self.axes_to_sum)
input -= m.dimshuffle(*self.dimshuffle_args)
inv_stdv = self.init_stdv/T.sqrt(T.mean(T.square(input), self.axes_to_sum))
input *= inv_stdv.dimshuffle(*self.dimshuffle_args)
self.init_updates = [(self.b, -m*inv_stdv), (self.g, self.g*inv_stdv)]
elif hasattr(self,'b'):
input += self.b.dimshuffle(*self.dimshuffle_args)
return self.nonlinearity(input)
def weight_norm(layer, **kwargs):
nonlinearity = getattr(layer, 'nonlinearity', None)
if nonlinearity is not None:
layer.nonlinearity = lasagne.nonlinearities.identity
if hasattr(layer, 'b'):
del layer.params[layer.b]
layer.b = None
return WeightNormLayer(layer, nonlinearity=nonlinearity, **kwargs)
class Deconv2DLayer(lasagne.layers.Layer):
def __init__(self, incoming, target_shape, filter_size, stride=(2, 2),
W=lasagne.init.Normal(0.05), b=lasagne.init.Constant(0.), nonlinearity=relu, **kwargs):
super(Deconv2DLayer, self).__init__(incoming, **kwargs)
self.target_shape = target_shape
self.nonlinearity = (lasagne.nonlinearities.identity if nonlinearity is None else nonlinearity)
self.filter_size = lasagne.layers.dnn.as_tuple(filter_size, 2)
self.stride = lasagne.layers.dnn.as_tuple(stride, 2)
self.target_shape = target_shape
self.W_shape = (incoming.output_shape[1], target_shape[1], filter_size[0], filter_size[1])
self.W = self.add_param(W, self.W_shape, name="W")
if b is not None:
self.b = self.add_param(b, (target_shape[1],), name="b")
else:
self.b = None
def get_output_for(self, input, **kwargs):
op = T.nnet.abstract_conv.AbstractConv2d_gradInputs(imshp=self.target_shape, kshp=self.W_shape, subsample=self.stride, border_mode='half')
activation = op(self.W, input, self.target_shape[2:])
if self.b is not None:
activation += self.b.dimshuffle('x', 0, 'x', 'x')
return self.nonlinearity(activation)
def get_output_shape_for(self, input_shape):
return self.target_shape
# minibatch discrimination layer
class MinibatchLayer(lasagne.layers.Layer):
def __init__(self, incoming, num_kernels, dim_per_kernel=5, theta=lasagne.init.Normal(0.05),
log_weight_scale=lasagne.init.Constant(0.), b=lasagne.init.Constant(-1.), **kwargs):
super(MinibatchLayer, self).__init__(incoming, **kwargs)
self.num_kernels = num_kernels
num_inputs = int(np.prod(self.input_shape[1:]))
self.theta = self.add_param(theta, (num_inputs, num_kernels, dim_per_kernel), name="theta")
self.log_weight_scale = self.add_param(log_weight_scale, (num_kernels, dim_per_kernel), name="log_weight_scale")
self.W = self.theta * (T.exp(self.log_weight_scale)/T.sqrt(T.sum(T.square(self.theta),axis=0))).dimshuffle('x',0,1)
self.b = self.add_param(b, (num_kernels,), name="b")
def get_output_shape_for(self, input_shape):
return (input_shape[0], np.prod(input_shape[1:])+self.num_kernels)
def get_output_for(self, input, init=False, **kwargs):
if input.ndim > 2:
# if the input has more than two dimensions, flatten it into a
# batch of feature vectors.
input = input.flatten(2)
activation = T.tensordot(input, self.W, [[1], [0]])
abs_dif = (T.sum(abs(activation.dimshuffle(0,1,2,'x') - activation.dimshuffle('x',1,2,0)),axis=2)
+ 1e6 * T.eye(input.shape[0]).dimshuffle(0,'x',1))
if init:
mean_min_abs_dif = 0.5 * T.mean(T.min(abs_dif, axis=2),axis=0)
abs_dif /= mean_min_abs_dif.dimshuffle('x',0,'x')
self.init_updates = [(self.log_weight_scale, self.log_weight_scale-T.log(mean_min_abs_dif).dimshuffle(0,'x'))]
f = T.sum(T.exp(-abs_dif),axis=2)
if init:
mf = T.mean(f,axis=0)
f -= mf.dimshuffle('x',0)
self.init_updates.append((self.b, -mf))
else:
f += self.b.dimshuffle('x',0)
return T.concatenate([input, f], axis=1)
class BatchNormLayer(lasagne.layers.Layer):
def __init__(self, incoming, b=lasagne.init.Constant(0.), g=lasagne.init.Constant(1.), nonlinearity=relu, **kwargs):
super(BatchNormLayer, self).__init__(incoming, **kwargs)
self.nonlinearity = nonlinearity
k = self.input_shape[1]
if b is not None:
self.b = self.add_param(b, (k,), name="b", regularizable=False)
if g is not None:
self.g = self.add_param(g, (k,), name="g", regularizable=False)
self.avg_batch_mean = self.add_param(lasagne.init.Constant(0.), (k,), name="avg_batch_mean", regularizable=False, trainable=False)
self.avg_batch_var = self.add_param(lasagne.init.Constant(1.), (k,), name="avg_batch_var", regularizable=False, trainable=False)
if len(self.input_shape)==4:
self.axes_to_sum = (0,2,3)
self.dimshuffle_args = ['x',0,'x','x']
else:
self.axes_to_sum = 0
self.dimshuffle_args = ['x',0]
def get_output_for(self, input, deterministic=False, **kwargs):
if deterministic:
norm_features = (input-self.avg_batch_mean.dimshuffle(*self.dimshuffle_args)) / T.sqrt(1e-6 + self.avg_batch_var).dimshuffle(*self.dimshuffle_args)
else:
batch_mean = T.mean(input,axis=self.axes_to_sum).flatten()
centered_input = input-batch_mean.dimshuffle(*self.dimshuffle_args)
batch_var = T.mean(T.square(centered_input),axis=self.axes_to_sum).flatten()
batch_stdv = T.sqrt(1e-6 + batch_var)
norm_features = centered_input / batch_stdv.dimshuffle(*self.dimshuffle_args)
# BN updates
new_m = 0.9*self.avg_batch_mean + 0.1*batch_mean
new_v = 0.9*self.avg_batch_var + T.cast((0.1*input.shape[0])/(input.shape[0]-1),th.config.floatX)*batch_var
self.bn_updates = [(self.avg_batch_mean, new_m), (self.avg_batch_var, new_v)]
if hasattr(self, 'g'):
activation = norm_features*self.g.dimshuffle(*self.dimshuffle_args)
else:
activation = norm_features
if hasattr(self, 'b'):
activation += self.b.dimshuffle(*self.dimshuffle_args)
return self.nonlinearity(activation)
def batch_norm(layer, b=lasagne.init.Constant(0.), g=lasagne.init.Constant(1.), **kwargs):
"""
adapted from https://gist.github.com/f0k/f1a6bd3c8585c400c190
"""
nonlinearity = getattr(layer, 'nonlinearity', None)
if nonlinearity is not None:
layer.nonlinearity = lasagne.nonlinearities.identity
else:
nonlinearity = lasagne.nonlinearities.identity
if hasattr(layer, 'b'):
del layer.params[layer.b]
layer.b = None
return BatchNormLayer(layer, b, g, nonlinearity=nonlinearity, **kwargs)
class GaussianNoiseLayer(lasagne.layers.Layer):
def __init__(self, incoming, sigma=0.1, **kwargs):
super(GaussianNoiseLayer, self).__init__(incoming, **kwargs)
self._srng = RandomStreams(lasagne.random.get_rng().randint(1, 2147462579))
self.sigma = sigma
def get_output_for(self, input, deterministic=False, use_last_noise=False, **kwargs):
if deterministic or self.sigma == 0:
return input
else:
if not use_last_noise:
self.noise = self._srng.normal(input.shape, avg=0.0, std=self.sigma)
return input + self.noise
# /////////// older code used for MNIST ////////////
# weight normalization
def l2normalize(layer, train_scale=True):
W_param = layer.W
s = W_param.get_value().shape
if len(s)==4:
axes_to_sum = (1,2,3)
dimshuffle_args = [0,'x','x','x']
k = s[0]
else:
axes_to_sum = 0
dimshuffle_args = ['x',0]
k = s[1]
layer.W_scale = layer.add_param(lasagne.init.Constant(1.),
(k,), name="W_scale", trainable=train_scale, regularizable=False)
layer.W = W_param * (layer.W_scale/T.sqrt(1e-6 + T.sum(T.square(W_param),axis=axes_to_sum))).dimshuffle(*dimshuffle_args)
return layer
# fully connected layer with weight normalization
class DenseLayer(lasagne.layers.Layer):
def __init__(self, incoming, num_units, theta=lasagne.init.Normal(0.1), b=lasagne.init.Constant(0.),
weight_scale=lasagne.init.Constant(1.), train_scale=False, nonlinearity=relu, **kwargs):
super(DenseLayer, self).__init__(incoming, **kwargs)
self.nonlinearity = (lasagne.nonlinearities.identity if nonlinearity is None else nonlinearity)
self.num_units = num_units
num_inputs = int(np.prod(self.input_shape[1:]))
self.theta = self.add_param(theta, (num_inputs, num_units), name="theta")
self.weight_scale = self.add_param(weight_scale, (num_units,), name="weight_scale", trainable=train_scale)
self.W = self.theta * (self.weight_scale/T.sqrt(T.sum(T.square(self.theta),axis=0))).dimshuffle('x',0)
self.b = self.add_param(b, (num_units,), name="b")
def get_output_shape_for(self, input_shape):
return (input_shape[0], self.num_units)
def get_output_for(self, input, init=False, deterministic=False, **kwargs):
if input.ndim > 2:
# if the input has more than two dimensions, flatten it into a
# batch of feature vectors.
input = input.flatten(2)
activation = T.dot(input, self.W)
if init:
ma = T.mean(activation, axis=0)
activation -= ma.dimshuffle('x',0)
stdv = T.sqrt(T.mean(T.square(activation),axis=0))
activation /= stdv.dimshuffle('x',0)
self.init_updates = [(self.weight_scale, self.weight_scale/stdv), (self.b, -ma/stdv)]
else:
activation += self.b.dimshuffle('x', 0)
return self.nonlinearity(activation)