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Deep Learning for Beginners

You're reading from   Deep Learning for Beginners A beginner's guide to getting up and running with deep learning from scratch using Python

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Product type Paperback
Published in Sep 2020
Publisher Packt
ISBN-13 9781838640859
Length 432 pages
Edition 1st Edition
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Authors (2):
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Pablo Rivas Pablo Rivas
Author Profile Icon Pablo Rivas
Pablo Rivas
Dr. Pablo Rivas Dr. Pablo Rivas
Author Profile Icon Dr. Pablo Rivas
Dr. Pablo Rivas
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Table of Contents (20) Chapters Close

Preface 1. Section 1: Getting Up to Speed
2. Introduction to Machine Learning FREE CHAPTER 3. Setup and Introduction to Deep Learning Frameworks 4. Preparing Data 5. Learning from Data 6. Training a Single Neuron 7. Training Multiple Layers of Neurons 8. Section 2: Unsupervised Deep Learning
9. Autoencoders 10. Deep Autoencoders 11. Variational Autoencoders 12. Restricted Boltzmann Machines 13. Section 3: Supervised Deep Learning
14. Deep and Wide Neural Networks 15. Convolutional Neural Networks 16. Recurrent Neural Networks 17. Generative Adversarial Networks 18. Final Remarks on the Future of Deep Learning 19. Other Books You May Enjoy

Questions and answers

  1. Which regularization strategy discussed in this chapter alleviates overfitting in deep models?

Dropout.

  1. Does adding a batch normalization layer make the learning algorithm have to learn more parameters?

Actually, no. For every layer in which dropout is used, there will be only two parameters for every neuron to learn: . If you do the math, the addition of new parameters is rather small.

  1. What other deep belief networks are out there?

Restricted Boltzmann machines, for example, are another very popular example of deep belief networks. Chapter 10, Restricted Boltzmann Machines, will cover these in more detail.

  1. How come deep autoencoders perform better on MNIST than on CIFAR-10?

Actually, we do not have an objective way of saying that deep autoencoders are better on these datasets. We are biased in thinking about it in terms of clustering and data labels. Our bias in thinking about the latent representations in Figure 8.12 and Figure 8.16 in terms of labels...

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