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Hands-On Deep Learning with R

You're reading from   Hands-On Deep Learning with R A practical guide to designing, building, and improving neural network models using R

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Product type Paperback
Published in Apr 2020
Publisher Packt
ISBN-13 9781788996839
Length 330 pages
Edition 1st Edition
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Authors (2):
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Rodger Devine Rodger Devine
Author Profile Icon Rodger Devine
Rodger Devine
Michael Pawlus Michael Pawlus
Author Profile Icon Michael Pawlus
Michael Pawlus
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Table of Contents (16) Chapters Close

Preface 1. Section 1: Deep Learning Basics
2. Machine Learning Basics FREE CHAPTER 3. Setting Up R for Deep Learning 4. Artificial Neural Networks 5. Section 2: Deep Learning Applications
6. CNNs for Image Recognition 7. Multilayer Perceptron for Signal Detection 8. Neural Collaborative Filtering Using Embeddings 9. Deep Learning for Natural Language Processing 10. Long Short-Term Memory Networks for Stock Forecasting 11. Generative Adversarial Networks for Faces 12. Section 3: Reinforcement Learning
13. Reinforcement Learning for Gaming 14. Deep Q-Learning for Maze Solving 15. Other Books You May Enjoy

Stacking RBMs to create a deep belief network

RBM models are a neural network with just two layers: the input, that is, the visible layer, and the hidden layer with latent features. However, it is possible to add additional hidden layers and an output layer. When this is done within the context of an RBM, it is referred to as a deep belief network. In this way, deep belief networks are like other deep learning architectures. For a deep belief network, each hidden layer is fully connected meaning that it learns the entire input.

The first layer is the typical RBM, where latent features are calculated from the input units. In the next layer, the new hidden layer learns the latent features from the previous hidden layer. This, in turn, can lead to an output layer for classification tasks.

Implementing a deep belief network uses a similar syntax to what was used to train the RBM....

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