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Neural Networks with R

You're reading from   Neural Networks with R Build smart systems by implementing popular deep learning models in R

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Product type Paperback
Published in Sep 2017
Publisher Packt
ISBN-13 9781788397872
Length 270 pages
Edition 1st Edition
Languages
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Authors (2):
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Balaji Venkateswaran Balaji Venkateswaran
Author Profile Icon Balaji Venkateswaran
Balaji Venkateswaran
Giuseppe Ciaburro Giuseppe Ciaburro
Author Profile Icon Giuseppe Ciaburro
Giuseppe Ciaburro
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Table of Contents (8) Chapters Close

Preface 1. Neural Network and Artificial Intelligence Concepts 2. Learning Process in Neural Networks FREE CHAPTER 3. Deep Learning Using Multilayer Neural Networks 4. Perceptron Neural Network Modeling – Basic Models 5. Training and Visualizing a Neural Network in R 6. Recurrent and Convolutional Neural Networks 7. Use Cases of Neural Networks – Advanced Topics

Taxonomy of neural networks

The basic foundation for ANNs is the same, but various neural network models have been designed during its evolution. The following are a few of the ANN models:

  • Adaptive Linear Element (ADALINE), is a simple perceptron which can solve only linear problems. Each neuron takes the weighted linear sum of the inputs and passes it to a bi-polar function, which either produces a +1 or -1 depending on the sum. The function checks the sum of the inputs passed and if the net is >= 0, it is +1, else it is -1.
  • Multiple ADALINEs (MADALINE), is a multilayer network of ADALINE units.
  • Perceptrons are single layer neural networks (single neuron or unit), where the input is multidimensional (vector) and the output is a function on the weight sum of the inputs.
  • Radial basis function network is an ANN where a radial basis function is used as an activation function. The network output is a linear combination of radial basis functions of the inputs and some neuron parameters.
  • Feed-forward is the simplest form of neural networks. The data is processed across layers without any loops are cycles. We will study the following feed- forward networks in this book:
    • Autoencoder
    • Probabilistic
    • Time delay
    • Covolutional
  • Recurrent Neural Networks (RNNs), unlike feed-forward networks, propagate data forward and also backwards from later processing stages to earlier stages. The following are the types of RNNs; we shall study them in our later chapters:
    • Hopfield networks
    • Boltzmann machine
    • Self Organizing Maps (SOMs)
    • Bidirectional Associative Memory (BAM)
    • Long Short Term Memory (LSTM)

The following images depict (a) Recurrent neural network and (b) Forward neural network:

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