Book Image

Scala for Machine Learning

By : Patrick R. Nicolas
Book Image

Scala for Machine Learning

By: Patrick R. Nicolas

Overview of this book

Table of Contents (20 chapters)
Scala for Machine Learning
Credits
About the Author
About the Reviewers
www.PacktPub.com
Preface
Index

Convolution neural networks


This section is provided as a brief introduction to convolution neural networks without the Scala implementation.

So far, the layers of perceptrons were organized as a fully connected network. It is clear that the number of synapses or weights increases significantly as the number and size of hidden layers increases. For instance, a network for a features set of dimension 6, 3 hidden layers of 64 nodes each, and one output value requires 7*64 + 2*65*64 + 65*1 = 8833 weights!

Applications such as image or character recognition require very large features set, making training a fully connected layered perceptron very computational intensive. Moreover, these applications need to convey spatial information such as the proximity of pixels as part of the features vector.

A recent approach, known as convolution neural networks, consists of limiting the number of nodes in the hidden layers a input node is connected to. In other words, the methodology leverages spatial localization...