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Neural Networks: Computational Models and Applications Book

Neural Networks: Computational Models and Applications
Neural Networks: Computational Models and Applications, , Neural Networks: Computational Models and Applications has a rating of 3 stars
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Neural Networks: Computational Models and Applications, , Neural Networks: Computational Models and Applications
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  • Neural Networks: Computational Models and Applications
  • Written by author Huajin Tang
  • Published by Springer-Verlag New York, LLC, April 2007
  • Neural Networks: Computational Models and Applications covers a wealth of important theoretical and practical issues in neural networks, including the learning algorithms of feed-forward neural networks, various dynamical properties of recurrent neura
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Book Categories

Authors

Introduction.- Feedforward Neural Networks and Training Methods.- New Dynamical Optimal Learning for Linear Multilayer FNN.- Fundamentals of Dynamic Systems.- Various Computational Models and Applications.- Convergence Analysis of Discrete Time RNNs for Linear Variational Inequality Problem.- Parameter Settings of Hop¯eld Networks Applied to Traveling Salesman Problems.- Competitive Model for Combinatorial Optimization Problems.- Competitive Neural Networks for Image Segmentation.- Columnar Competitive Model for Solving Multi-Traveling Salesman Problem.- Improving Local Minima of Columnar Competitive Model.- A New Algorithm for Finding the Shortest Paths Using PCNN.- Qualitative Analysis for Neural Networks with LT Transfer Functions.- Analysis of Cyclic Dynamics for Networks of Linear Threshold Neurons.- LT Network Dynamics and Analog Associative Memory.- Output Convergence Analysis for Delayed RNN with Time Varying Inputs.- Background Neural Networks with Uniform Firing Rate and Background Input.


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