Mercurial > ift6266
view scripts/stacked_dae/mnist_sda.py @ 138:128507ac4edf
Initial commit for the stacked convolutional denoising autoencoders
author | Owner <salahmeister@gmail.com> |
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date | Sun, 21 Feb 2010 17:30:38 -0600 |
parents | 5c79a2557f2f |
children | 7d8366fb90bf |
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#!/usr/bin/python # coding: utf-8 # Parameterize call to sgd_optimization for MNIST import numpy import theano import time import theano.tensor as T from theano.tensor.shared_randomstreams import RandomStreams from stacked_dae import sgd_optimization import cPickle, gzip from jobman import DD MNIST_LOCATION = '/u/savardf/datasets/mnist.pkl.gz' def sgd_optimization_mnist(learning_rate=0.1, pretraining_epochs = 2, \ pretrain_lr = 0.1, training_epochs = 5, \ dataset='mnist.pkl.gz'): # Load the dataset f = gzip.open(dataset,'rb') # this gives us train, valid, test (each with .x, .y) dataset = cPickle.load(f) f.close() n_ins = 28*28 n_outs = 10 hyperparameters = DD({'finetuning_lr':learning_rate, 'pretraining_lr':pretrain_lr, 'pretraining_epochs_per_layer':pretraining_epochs, 'max_finetuning_epochs':training_epochs, 'hidden_layers_sizes':[1000,1000,1000], 'corruption_levels':[0.2,0.2,0.2], 'minibatch_size':20}) sgd_optimization(dataset, hyperparameters, n_ins, n_outs) if __name__ == '__main__': sgd_optimization_mnist()