Description

Book Synopsis
Neural networks consist of interconnected groups of neurons which function as processing units and aim to reconstruct the operation of the human brain.

Table of Contents
Preface.

Introduction.

Fundamentals.

Network Architectures for Prediction.

Activation Functions Used in Neural Networks.

Recurrent Neural Networks Architectures.

Neural Networks as Nonlinear Adaptive Filters.

Stability Issues in RNN Architectures.

Data-Reusing Adaptive Learning Algorithms.

A Class of Normalised Algorithms for Online Training of Recurrent Neural Networks.

Convergence of Online Learning Algorithms in Neural Networks.

Some Practical Considerations of Predictability and Learning Algorithms for Various Signals.

Exploiting Inherent Relationships Between Parameters in Recurrent Neural Networks.

Appendix A: The O Notation and Vector and Matrix Differentiation.

Appendix B: Concepts from the Approximation Theory.

Appendix C: Complex Sigmoid Activation Functions, Holomorphic Mappings and Modular Groups.

Appendix D: Learning Algorithms for RNNs.

Appendix E: Terminology Used in the Field of Neural Networks.

Appendix F: On the A Posteriori Approach in Science and Engineering.

Appendix G: Contraction Mapping Theorems.

Appendix H: Linear GAS Relaxation.

Appendix I: The Main Notions in Stability Theory.

Appendix J: Deasonsonalising Time Series.

References.

Index.

Recurrent Neural Networks for Prediction Learning

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    A Hardback by Danilo P. Mandic, Jonathon A. Chambers

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      View other formats and editions of Recurrent Neural Networks for Prediction Learning by Danilo P. Mandic

      Publisher: John Wiley & Sons Inc
      Publication Date: 06/08/2001
      ISBN13: 9780471495178, 978-0471495178
      ISBN10: 0471495174

      Description

      Book Synopsis
      Neural networks consist of interconnected groups of neurons which function as processing units and aim to reconstruct the operation of the human brain.

      Table of Contents
      Preface.

      Introduction.

      Fundamentals.

      Network Architectures for Prediction.

      Activation Functions Used in Neural Networks.

      Recurrent Neural Networks Architectures.

      Neural Networks as Nonlinear Adaptive Filters.

      Stability Issues in RNN Architectures.

      Data-Reusing Adaptive Learning Algorithms.

      A Class of Normalised Algorithms for Online Training of Recurrent Neural Networks.

      Convergence of Online Learning Algorithms in Neural Networks.

      Some Practical Considerations of Predictability and Learning Algorithms for Various Signals.

      Exploiting Inherent Relationships Between Parameters in Recurrent Neural Networks.

      Appendix A: The O Notation and Vector and Matrix Differentiation.

      Appendix B: Concepts from the Approximation Theory.

      Appendix C: Complex Sigmoid Activation Functions, Holomorphic Mappings and Modular Groups.

      Appendix D: Learning Algorithms for RNNs.

      Appendix E: Terminology Used in the Field of Neural Networks.

      Appendix F: On the A Posteriori Approach in Science and Engineering.

      Appendix G: Contraction Mapping Theorems.

      Appendix H: Linear GAS Relaxation.

      Appendix I: The Main Notions in Stability Theory.

      Appendix J: Deasonsonalising Time Series.

      References.

      Index.

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