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Deep Learning Quick Reference

You're reading from   Deep Learning Quick Reference Useful hacks for training and optimizing deep neural networks with TensorFlow and Keras

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Product type Paperback
Published in Mar 2018
Publisher Packt
ISBN-13 9781788837996
Length 272 pages
Edition 1st Edition
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Author (1):
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Mike Bernico Mike Bernico
Author Profile Icon Mike Bernico
Mike Bernico
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Table of Contents (15) Chapters Close

Preface 1. The Building Blocks of Deep Learning FREE CHAPTER 2. Using Deep Learning to Solve Regression Problems 3. Monitoring Network Training Using TensorBoard 4. Using Deep Learning to Solve Binary Classification Problems 5. Using Keras to Solve Multiclass Classification Problems 6. Hyperparameter Optimization 7. Training a CNN from Scratch 8. Transfer Learning with Pretrained CNNs 9. Training an RNN from scratch 10. Training LSTMs with Word Embeddings from Scratch 11. Training Seq2Seq Models 12. Using Deep Reinforcement Learning 13. Generative Adversarial Networks 14. Other Books You May Enjoy

1D CNNs for natural language processing

Way back in Chapter 7, Training a CNN From Scratch, we used convolutions to slide a window over regions of an image to learn complex visual features. This allowed us to learn important local visual features, regardless of where in the picture those features might have been, and then hierarchically learn more and more complex features as our network got deeper. We typically used a 3 x 3 or 5 x 5 filter on a 2D or 3D image. You may want to review Chapter 7, Training a CNN From Scratch, if you are feeling rusty on your understanding of convolution layers and how they work.

It turns out that we can use the same strategy on a sequence of words. Here, our 2D matrix is the output from an embedding layer. Each row represents a word, and all the elements in that row are its word vector. Continuing with the preceding example, we would have a 10 x...

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