Book Image

Advanced Deep Learning with TensorFlow 2 and Keras - Second Edition

By : Rowel Atienza
Book Image

Advanced Deep Learning with TensorFlow 2 and Keras - Second Edition

By: Rowel Atienza

Overview of this book

Advanced Deep Learning with TensorFlow 2 and Keras, Second Edition is a completely updated edition of the bestselling guide to the advanced deep learning techniques available today. Revised for TensorFlow 2.x, this edition introduces you to the practical side of deep learning with new chapters on unsupervised learning using mutual information, object detection (SSD), and semantic segmentation (FCN and PSPNet), further allowing you to create your own cutting-edge AI projects. Using Keras as an open-source deep learning library, the book features hands-on projects that show you how to create more effective AI with the most up-to-date techniques. Starting with an overview of multi-layer perceptrons (MLPs), convolutional neural networks (CNNs), and recurrent neural networks (RNNs), the book then introduces more cutting-edge techniques as you explore deep neural network architectures, including ResNet and DenseNet, and how to create autoencoders. You will then learn about GANs, and how they can unlock new levels of AI performance. Next, you’ll discover how a variational autoencoder (VAE) is implemented, and how GANs and VAEs have the generative power to synthesize data that can be extremely convincing to humans. You'll also learn to implement DRL such as Deep Q-Learning and Policy Gradient Methods, which are critical to many modern results in AI.
Table of Contents (16 chapters)
14
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15
Index

10. Conclusion

In this chapter, we discussed MI and the ways in which it can be useful in solving unsupervised tasks. Various online resources provide additional background about MI [4]. When used in clustering, maximizing MI forces the latent code vectors to cluster in regions that are suitable for easy labeling, either using linear assignment or a linear classifier.

We presented two measures of MI: IIC and MINE. We can closely approximate MI that leads to a classifier that performs with high accuracy by using IIC on discrete random variables. IIC is suitable for discrete probability distributions. For continuous random variables, MINE uses the Donsker-Varadhan form of KL-divergence to model a deep neural network that estimates MI. We demonstrated that MINE can closely approximate the MI of a bivariate Gaussian distribution. As an unsupervised method, MINE shows acceptable performance on classifying MNIST digits.