Book Image

Hands-On Unsupervised Learning with Python

By : Giuseppe Bonaccorso
Book Image

Hands-On Unsupervised Learning with Python

By: Giuseppe Bonaccorso

Overview of this book

Unsupervised learning is about making use of raw, untagged data and applying learning algorithms to it to help a machine predict its outcome. With this book, you will explore the concept of unsupervised learning to cluster large sets of data and analyze them repeatedly until the desired outcome is found using Python. This book starts with the key differences between supervised, unsupervised, and semi-supervised learning. You will be introduced to the best-used libraries and frameworks from the Python ecosystem and address unsupervised learning in both the machine learning and deep learning domains. You will explore various algorithms, techniques that are used to implement unsupervised learning in real-world use cases. You will learn a variety of unsupervised learning approaches, including randomized optimization, clustering, feature selection and transformation, and information theory. You will get hands-on experience with how neural networks can be employed in unsupervised scenarios. You will also explore the steps involved in building and training a GAN in order to process images. By the end of this book, you will have learned the art of unsupervised learning for different real-world challenges.
Table of Contents (12 chapters)

Summary

In this chapter, we introduced the concept of GANs, discussing an example of a DCGAN. Such models have the ability to learn a data generating process through the use of two neural networks involved in a minimax game. The generator has to learn how to return samples that are indistinguishable from the others employed during the training process. The discriminator, or critic, has to become smarter and smarter in only assigning high probabilities to valid samples. The adversarial training approach is based on the idea of forcing the generator to win against the discriminator, by learning how to cheat it with synthetic samples with the same properties as the real ones. At the same time, the generator is forced to win against the discriminator by becoming more and more selective. In our examples, we also analyzed an important variant, called WGAN, which can be employed when...