Mercurial > pylearn
diff sparse_random_autoassociator/parameters.py @ 377:67c339260875
merge
author | Yoshua Bengio <bengioy@iro.umontreal.ca> |
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date | Mon, 07 Jul 2008 10:09:37 -0400 |
parents | a1bbcde6b456 |
children |
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--- /dev/null Thu Jan 01 00:00:00 1970 +0000 +++ b/sparse_random_autoassociator/parameters.py Mon Jul 07 10:09:37 2008 -0400 @@ -0,0 +1,28 @@ +""" +Parameters (weights) used by the L{Model}. +""" + +import numpy +import globals + +class Parameters: + """ + Parameters used by the L{Model}. + """ + def __init__(self, input_dimension=globals.INPUT_DIMENSION, hidden_dimension=globals.HIDDEN_DIMENSION, randomly_initialize=False, seed=globals.SEED): + """ + Initialize L{Model} parameters. + @param randomly_initialize: If True, then randomly initialize + according to the given seed. If False, then just use zeroes. + """ + if randomly_initialize: + numpy.random.seed(seed) + self.w1 = (numpy.random.rand(input_dimension, hidden_dimension)-0.5)/input_dimension + self.w2 = (numpy.random.rand(hidden_dimension, input_dimension)-0.5)/hidden_dimension + self.b1 = numpy.zeros(hidden_dimension) + self.b2 = numpy.zeros(input_dimension) + else: + self.w1 = numpy.zeros((input_dimension, hidden_dimension)) + self.w2 = numpy.zeros((hidden_dimension, input_dimension)) + self.b1 = numpy.zeros(hidden_dimension) + self.b2 = numpy.zeros(input_dimension)