Book Image

R Deep Learning Cookbook

By : PKS Prakash, Achyutuni Sri Krishna Rao
Book Image

R Deep Learning Cookbook

By: PKS Prakash, Achyutuni Sri Krishna Rao

Overview of this book

Deep Learning is the next big thing. It is a part of machine learning. It's favorable results in applications with huge and complex data is remarkable. Simultaneously, R programming language is very popular amongst the data miners and statisticians. This book will help you to get through the problems that you face during the execution of different tasks and Understand hacks in deep learning, neural networks, and advanced machine learning techniques. It will also take you through complex deep learning algorithms and various deep learning packages and libraries in R. It will be starting with different packages in Deep Learning to neural networks and structures. You will also encounter the applications in text mining and processing along with a comparison between CPU and GPU performance. By the end of the book, you will have a logical understanding of Deep learning and different deep learning packages to have the most appropriate solutions for your problems.
Table of Contents (17 chapters)
Title Page
Credits
About the Authors
About the Reviewer
www.PacktPub.com
Customer Feedback
Preface

Chapter 3. Convolution Neural Network

In this chapter, we will cover the following topics:

  • Downloading and configuring an image dataset
  • Learning the architecture of a CNN classifier
  • Using functions to initialize weights and biases
  • Using functions to create a new convolution layer
  • Using functions to flatten the densely connected layer
  • Defining placeholder variables
  • Creating the first convolution layer
  • Creating the second convolution layer
  • Flattening the second convolution layer
  • Creating the first fully connected layer
  • Applying dropout to the first fully connected layer
  • Creating the second fully connected layer with dropout
  • Applying softmax activation to obtain a predicted class
  • Defining the cost function used for optimization
  • Performing gradient descent cost optimization
  • Executing the graph in a TensorFlow session
  • Evaluating the performance on test data