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R Deep Learning Essentials - Second Edition
book

R Deep Learning Essentials - Second Edition

by Mark Hodnett, Joshua F. Wiley
August 2018
Intermediate to advanced
378 pages
9h 9m
English
Packt Publishing
Content preview from R Deep Learning Essentials - Second Edition

Deep Learning Fundamentals

In the previous chapter, we created some machine learning models using neural network packages in R. This chapter will look at some of the fundamentals of neural networks and deep learning by creating a neural network using basic mathematical and matrix operations. This application sample will be useful for explaining some key parameters in deep learning algorithms and some of the optimizations that allow them to train on large datasets. We will also demonstrate how to evaluate different hyper-parameters for models to find the best set. In the previous chapter, we briefly looked at the problem of overfitting; this chapter goes into that topic in more depth and looks at how you can overcome this problem. It includes ...

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Publisher Resources

ISBN: 9781788992893Supplemental Content