提交 01e67c7f authored 作者: Olivier Delalleau's avatar Olivier Delalleau

Fixed a number of typos in doc reported by eneftci

Also made sample code better PEP8-compliant, and fixed a minor typo in an error message. Fixes gh-1353
上级 50248b0f
......@@ -295,25 +295,26 @@ the following:
.. code-block:: python
W = theano.shared ( W_values ) # we assume that ``W_values`` contains the
# initial values of your weight matrix
W = theano.shared(W_values) # we assume that ``W_values`` contains the
# initial values of your weight matrix
bvis = theano.shared( bvis_values)
bhid = theano.shared( bhid_values)
bvis = theano.shared(bvis_values)
bhid = theano.shared(bhid_values)
trng = T.shared_randomstreams.RandomStreams(1234)
def OneStep( vsample) :
hmean = T.nnet.sigmoid( theano.dot( vsample, W) + bhid)
hsample = trng.binomial( size = hmean.shape, n = 1, prob = hmean)
vmean = T.nnet.sigmoid( theano.dot( hsample. W.T) + bvis)
return trng.binomial( size = vsample.shape, n = 1, prob = vsample)
def OneStep(vsample) :
hmean = T.nnet.sigmoid(theano.dot(vsample, W) + bhid)
hsample = trng.binomial(size=hmean.shape, n=1, p=hmean)
vmean = T.nnet.sigmoid(theano.dot(hsample, W.T) + bvis)
return trng.binomial(size=vsample.shape, n=1, p=vmean,
dtype=theano.config.floatX)
sample = theano.tensor.vector()
values, updates = theano.scan( OneStep, outputs_info = sample, n_steps = 10 )
values, updates = theano.scan(OneStep, outputs_info=sample, n_steps=10)
gibbs10 = theano.function([sample], values[-1], updates = updates)
gibbs10 = theano.function([sample], values[-1], updates=updates)
Note that if we use shared variables ( ``W``, ``bvis``, ``bhid``) but
......@@ -335,7 +336,7 @@ afterwards. Look at this example :
.. code-block:: python
a = theano.shared(1)
values,updates = theano.scan( lambda : {a:a+1}, n_steps = 10 )
values, updates = theano.scan(lambda: {a: a+1}, n_steps=10)
In this case the lambda expression does not require any input parameters
and returns an update dictionary which tells how ``a`` should be updated
......@@ -343,9 +344,9 @@ after each step of scan. If we write :
.. code-block:: python
b = a+1
b = a + 1
c = updates[a] + 1
f = theano.function([], [b,c], updates = updates)
f = theano.function([], [b, c], updates=updates)
print b
print c
......
......@@ -228,7 +228,7 @@ class Scan(PureOp):
)
err_msg2 = ('When compiling the inner function of scan the '
'following error has been encountered: The '
'initial state (outputs_info in scan nomenclature)'
'initial state (outputs_info in scan nomenclature) '
'of variable %s (argument number %d)'
' has dtype %s and %d dimension(s), while the result '
'of the inner function for this output has dtype %s '
......
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