Description

Book Synopsis

This textbook provides a compact but comprehensive treatment that provides analytical and design steps to recurrent neural networks from scratch. It provides a treatment of the general recurrent neural networks with principled methods for training that render the (generalized) backpropagation through time (BPTT). This author focuses on the basics and nuances of recurrent neural networks, providing technical and principled treatment of the subject, with a view toward using coding and deep learning computational frameworks, e.g., Python and Tensorflow-Keras. Recurrent neural networks are treated holistically from simple to gated architectures, adopting the technical machinery of adaptive non-convex optimization with dynamic constraints to leverage its systematic power in organizing the learning and training processes. This permits the flow of concepts and techniques that provide grounded support for design and training choices. The author’s approach enables strategic co-training of output layers, using supervised learning, and hidden layers, using unsupervised learning, to generate more efficient internal representations and accuracy performance. As a result, readers will be enabled to create designs tailoring proficient procedures for recurrent neural networks in their targeted applications.



Table of Contents
Introduction1. Network Architectures2. Learning Processes3. Recurrent Neural Networks (RNN)4. Gated RNN: The Long Short-Term Memory (LSTM) RNN5. Gated RNN: The Gated Recurrent Unit (GRU) RNN6. Gated RNN: The Minimal Gated Unit (MGU) RNN

Recurrent Neural Networks: From Simple to Gated

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    A Hardback by Fathi M. Salem

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      View other formats and editions of Recurrent Neural Networks: From Simple to Gated by Fathi M. Salem

      Publisher: Springer Nature Switzerland AG
      Publication Date: 04/01/2022
      ISBN13: 9783030899288, 978-3030899288
      ISBN10: 3030899284

      Description

      Book Synopsis

      This textbook provides a compact but comprehensive treatment that provides analytical and design steps to recurrent neural networks from scratch. It provides a treatment of the general recurrent neural networks with principled methods for training that render the (generalized) backpropagation through time (BPTT). This author focuses on the basics and nuances of recurrent neural networks, providing technical and principled treatment of the subject, with a view toward using coding and deep learning computational frameworks, e.g., Python and Tensorflow-Keras. Recurrent neural networks are treated holistically from simple to gated architectures, adopting the technical machinery of adaptive non-convex optimization with dynamic constraints to leverage its systematic power in organizing the learning and training processes. This permits the flow of concepts and techniques that provide grounded support for design and training choices. The author’s approach enables strategic co-training of output layers, using supervised learning, and hidden layers, using unsupervised learning, to generate more efficient internal representations and accuracy performance. As a result, readers will be enabled to create designs tailoring proficient procedures for recurrent neural networks in their targeted applications.



      Table of Contents
      Introduction1. Network Architectures2. Learning Processes3. Recurrent Neural Networks (RNN)4. Gated RNN: The Long Short-Term Memory (LSTM) RNN5. Gated RNN: The Gated Recurrent Unit (GRU) RNN6. Gated RNN: The Minimal Gated Unit (MGU) RNN

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