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Practical Machine Learning

You're reading from   Practical Machine Learning Learn how to build Machine Learning applications to solve real-world data analysis challenges with this Machine Learning book – packed with practical tutorials

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Product type Paperback
Published in Jan 2016
Publisher Packt
ISBN-13 9781784399689
Length 468 pages
Edition 1st Edition
Languages
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Author (1):
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Sunila Gollapudi Sunila Gollapudi
Author Profile Icon Sunila Gollapudi
Sunila Gollapudi
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Toc

Table of Contents (16) Chapters Close

Preface 1. Introduction to Machine learning FREE CHAPTER 2. Machine learning and Large-scale datasets 3. An Introduction to Hadoop's Architecture and Ecosystem 4. Machine Learning Tools, Libraries, and Frameworks 5. Decision Tree based learning 6. Instance and Kernel Methods Based Learning 7. Association Rules based learning 8. Clustering based learning 9. Bayesian learning 10. Regression based learning 11. Deep learning 12. Reinforcement learning 13. Ensemble learning 14. New generation data architectures for Machine learning Index

Deep learning taxonomy

The feature learning taxonomy for deep learning cases is depicted here:

Deep learning taxonomy

Some of the frameworks that are used to implement neural network applications are listed here:

  • Theano is a Python library
  • Torch a Lua programming language
  • Deeplearning4J is an open, source Java-based framework that works with Spark and Hadoop
  • Caffe is a C++ based framework

Convolutional neural networks (CNN/ConvNets)

CNN, also known as convolution nets (ConvNets), are a variation of the regular neural networks.

Let us recap the function of the regular neural network. Regular neural networks have a single vector-based input that is transformed through a series of hidden layers where the neurons in each layer are connected with the neurons in its neighboring layers. The last layer in this series provides the output. This layer is called the output layer.

When the input to the neural network is an image and does not just fit into a single vector structure, the complexity grows. CNN have this slight variation...

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