Neural network fundamentals with graphs, algorithms, and applications

書誌事項

Neural network fundamentals with graphs, algorithms, and applications

N. K. Bose, P. Liang

(McGraw-Hill series in electrical and computer engineering, . Communications and signal processing)

McGraw-Hill, c1996

  • : hard

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注記

Includes bibliographical references (p. 447-462) and index

内容説明・目次

内容説明

Aimed at senior undergraduate or first-year graduate courses in neural networks and neurocomputing, this work presents neural network theory for diverse applications in a unified way, where the structures of artificial neural networks are characterized by distinguished classes of graphs.

目次

  • Part 1 Fundamentals: basics of neuroscience and artificial neuron models
  • graphs
  • algorithms. Part 2 Feedforward networks: perceptrons and LMS algorithm
  • complexity of learning using feedforward networks
  • adaptive structure networks. Part 3 Recurrent networks: symmetric and asymmetric recurrent network
  • competitive learning and self-organizing networks. Part 4 Applications of neural networks: neural networks approach to solving hard problems.

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