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Deep Learning Quick Reference
book

Deep Learning Quick Reference

by Mike Bernico
March 2018
Intermediate to advanced
272 pages
7h 53m
English
Packt Publishing
Content preview from Deep Learning Quick Reference

Hyperparameter Optimization

One of the biggest drawbacks to using deep neural networks is that they have many hyperparameters that should be optimized so that the network performs optimally. In each of the earlier chapters, we've encountered, but not covered, the challenge of hyperparameter estimation. Hyperparameter optimization is a really big topic; it's, for the most part, an unsolved problem and, while we can't cover the entire topic in this book, I think it still deserves its own chapter.

In this chapter, I'm going to offer you what I believe is some practical advice for choosing hyperparameters. To be sure, this chapter may be somewhat opinionated and biased because it comes from my own experience. I hope that experience might be useful ...

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Publisher Resources

ISBN: 9781788837996Supplemental Content