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adversarial-autoencoder's Issues

Reproducing quantitative results

Hi hjweide,
Thank you very much for the code. I am new to Theano and couldn't get my environment setup to run your code. However my question is, have you been able to reach an error rate of 1.90 (±0:10)% for MNIST 100 labels (as reported in original paper)? Even after 5000 epochs the lowest I get is somewhat around 5% (in my TensorFlow implementation).

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