提交 151e8f66 authored 作者: Olivier Delalleau's avatar Olivier Delalleau

Indent fix

上级 5df185d5
......@@ -61,7 +61,7 @@ class Kouh2008(object):
dtype = x_list[0].dtype
n_terms = len(x_list)
def shared_uniform(low, high, size, name):
def shared_uniform(low, high, size, name):
return _shared_uniform(rng, low, high, size, dtype, name)
use_softmax_w = True
......@@ -86,7 +86,7 @@ class Kouh2008(object):
raise ValueError('exponent range must have low <= high')
p_unbounded = shared_uniform(low=-0.1, high=0.1, size=(n_out,), name='p')
q_unbounded = shared_uniform(low=-0.1, high=0.1, size=(n_out,), name='q')
q_unbounded = shared_uniform(low=-0.1, high=0.1, size=(n_out,), name='q')
r_unbounded = shared_uniform(low=-0.1, high=0.1, size=(n_out,), name='r')
k_unbounded = shared_uniform(low=-0.2, high=0.2, size=(n_out,), name='k') # biases
......@@ -122,7 +122,7 @@ class Kouh2008(object):
"""Return a KouhLayer instance with random parameters
The parameters are drawn on a range [typically] suitable for fine-tuning by gradient
descent.
descent.
:param input: a tensor of shape (n_examples, n_in)
......@@ -137,7 +137,7 @@ class Kouh2008(object):
many 'simple cell' responses.
:param eps: this amount is added to the softplus of filter responses as a baseline
firing rate (that prevents a subsequent error from ``pow(0, p)``)
firing rate (that prevents a subsequent error from ``pow(0, p)``)
:returns: KouhLayer instance with freshly-allocated random weights.
......@@ -149,7 +149,7 @@ class Kouh2008(object):
dtype = input.dtype
_logger.debug('dtype %s' % dtype)
def shared_uniform(low, high, size, name):
def shared_uniform(low, high, size, name):
return _shared_uniform(rng, low, high, size, dtype, name)
f_list = [shared_uniform(low=-2.0/numpy.sqrt(n_in), high=2.0/numpy.sqrt(n_in), size=(n_in, n_out), name='f_%i'%i)
......@@ -232,7 +232,7 @@ class Config(object):
if dtype2=='floatX':
import theano.config as c
dtype2 = c.config.get('scalar.floatX')
rng_seed = 23498
n_hid = 300
......
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