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Simulating neural networks with Mathematica / James A. Freeman.

By: Material type: TextTextPublication details: Reading, Mass. : Addison-Wesley, c1994.Description: x, 341 p. : ill. ; 25 cmISBN:
  • 020156629X
  • 9780201566291
Subject(s): DDC classification:
  • 006.3   20
LOC classification:
  • QA76.87   .F72 1994
Contents:
Introduction to Neural Networks and Mathematica. -- Training by Error Minimization. -- Backpropagation and Its Variants. -- Probability and Neural Networks. -- Optimization and Constraint Satisfaction with Neural Networks. -- Feedback and Recurrent Networks. -- Adaptive Resonance Theory. -- Genetic Algorithms.
Summary: This book introduces neural networks, their operation, and application, in the context of the interactive Mathematica environment. Readers will learn how to simulate neural network operations using Mathematica, and will learn techniques for employing Mathematica to assess neural network behavior and performance. For students of neural networks in upper-level undergraduate or beginning graduate courses in computer science, engineering, and related areas. Also for researchers and practitioners interested in using Mathematica as a research tool.Features
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Item type Current library Call number Copy number Status Date due Barcode
Books Books Main library General Stacks 006.3 / FR.S 1994 (Browse shelf(Opens below)) 1 Available 001207

Includes bibliographical references (p. 335-336) and index.

Introduction to Neural Networks and Mathematica. -- Training by Error Minimization. -- Backpropagation and Its Variants. -- Probability and Neural Networks. -- Optimization and Constraint Satisfaction with Neural Networks. -- Feedback and Recurrent Networks. -- Adaptive Resonance Theory. -- Genetic Algorithms.

This book introduces neural networks, their operation, and application, in the context of the interactive Mathematica environment. Readers will learn how to simulate neural network operations using Mathematica, and will learn techniques for employing Mathematica to assess neural network behavior and performance. For students of neural networks in upper-level undergraduate or beginning graduate courses in computer science, engineering, and related areas. Also for researchers and practitioners interested in using Mathematica as a research tool.Features

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