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You're reading from  Deep Learning Quick Reference

Product typeBook
Published inMar 2018
Reading LevelExpert
PublisherPackt
ISBN-139781788837996
Edition1st Edition
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Mike Bernico
Mike Bernico
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Mike Bernico

Mike Bernico is a Lead Data Scientist at State Farm Mutual Insurance Companies. He also works as an adjunct for the University of Illinois at Springfield, where he teaches Essentials of Data Science, and Advanced Neural Networks and Deep Learning. Mike earned his MSCS from the University of Illinois at Springfield. He's an advocate for open source software and the good it can bring to the world. As a lifelong learner with umpteen hobbies, Mike also enjoys cycling, travel photography, and wine making.
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Safe choices for GAN

I've previously mentioned Soumith Chintala's GAN hacks Git (https://github.com/soumith/ganhacks), which is an excellent place to start when you're trying to make your GAN stable. Now that we've talked about how difficult it can be to train a stable GAN, let's talk about some of the safe choices that will likely help you succeed that you can find there. While there are quite a few hacks out there, here are my top recommendations that haven't been covered already in the chapter:

  • Batch norm: When using batch normalization, construct different minibatches for both real and fake data and make the updates separately.
  • Leaky ReLU: Leaky ReLU is a variation of the ReLU activation function. Recall the the ReLU function is .

Leaky ReLU, however, is formulated as:

Leaky ReLU allows very small, non-zero gradients when the unit isn&apos...

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Deep Learning Quick Reference
Published in: Mar 2018Publisher: PacktISBN-13: 9781788837996

Author (1)

author image
Mike Bernico

Mike Bernico is a Lead Data Scientist at State Farm Mutual Insurance Companies. He also works as an adjunct for the University of Illinois at Springfield, where he teaches Essentials of Data Science, and Advanced Neural Networks and Deep Learning. Mike earned his MSCS from the University of Illinois at Springfield. He's an advocate for open source software and the good it can bring to the world. As a lifelong learner with umpteen hobbies, Mike also enjoys cycling, travel photography, and wine making.
Read more about Mike Bernico