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Regression Analysis with R
book

Regression Analysis with R

by Giuseppe Ciaburro, Pierre Paquay, Manoj Kumar, Shaikh Salamatullah
January 2018
Beginner to intermediate
422 pages
9h 47m
English
Packt Publishing
Content preview from Regression Analysis with R

Regression with neural networks

Artificial neural networks (ANN) are mathematical models for the simulation of typical human brain activities such as image perception, pattern recognition, language understanding, sense-motor coordination, and so on. These models are composed of a system of nodes, equivalent to the neurons of a human brain, which are interconnected by weighted links, equivalent to the synapses between neurons. The output of the network is modified iteratively from link weights to convergence. The original data is provided to the input layer and the result of the network is returned from the output level. The input nodes represent the independent or predictor variables that are used to predict the dependent variables, that ...

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Publisher Resources

ISBN: 9781788627306Supplemental Content