Book Image

Neural Networks with R

By : Balaji Venkateswaran, Giuseppe Ciaburro
Book Image

Neural Networks with R

By: Balaji Venkateswaran, Giuseppe Ciaburro

Overview of this book

Neural networks are one of the most fascinating machine learning models for solving complex computational problems efficiently. Neural networks are used to solve wide range of problems in different areas of AI and machine learning. This book explains the niche aspects of neural networking and provides you with foundation to get started with advanced topics. The book begins with neural network design using the neural net package, then you’ll build a solid foundation knowledge of how a neural network learns from data, and the principles behind it. This book covers various types of neural network including recurrent neural networks and convoluted neural networks. You will not only learn how to train neural networks, but will also explore generalization of these networks. Later we will delve into combining different neural network models and work with the real-world use cases. By the end of this book, you will learn to implement neural network models in your applications with the help of practical examples in the book.
Table of Contents (14 chapters)
Title Page
Credits
About the Authors
About the Reviewer
www.PacktPub.com
Customer Feedback
Preface

Summary


Deep learning is a subject of importance right from image detection to speech recognition and AI-related activity. There are numerous products and packages in the market for deep learning. Some of these are Keras, TensorFlow, h2o, and many others.

In this chapter, we learned the basics of deep learning, many variations of DNNs, the most important deep learning algorithms, and the basic workflow for deep learning. We explored the different packages available in R to handle DNNs.

To understand how to build and train a DNN, we analyzed a practical example of DNN implementation with the neuralnet package. We learned how to normalize data across the various available techniques, to remove data units, allowing you to easily compare data from different locations. We saw how to split the data for the training and testing of the network. We learned to use the neuralnet function to build and train a multilayered neural network. So we understood how to use the trained network to make predictions...