Competition and Cooperation in Neural Nets Proceedings of the U.S.-Japan Joint Seminar held at Kyoto, Japan February 15–19, 1982

The human brain, wi th its hundred billion or more neurons, is both one of the most complex systems known to man and one of the most important. The last decade has seen an explosion of experimental research on the brain, but little theory of neural networks beyond the study of electrical properties...

Full description

Bibliographic Details
Other Authors: Amari, S. (Editor), Arbib, M. A. (Editor)
Format: eBook
Language:English
Published: Berlin, Heidelberg Springer Berlin Heidelberg 1982, 1982
Edition:1st ed. 1982
Series:Lecture Notes in Biomathematics
Subjects:
Online Access:
Collection: Springer Book Archives -2004 - Collection details see MPG.ReNa
Table of Contents:
  • 14. Systems Matching and Topographic Maps: The Branch-Arrow Model (BAM)
  • 15. Differential Localization of Plastic Synapses in the Visual Cortex of the Young Kitten: Evidence for Guided Development of the Visual Cortical Networks
  • 16. Self-Organization of Neural Nets with Competitive and Cooperative Interaction
  • 17. A Simple Paradigm for the Self-Organized Formation of Structured Feature Maps
  • 18. Neocognitron: A Self-Organizing Neural Network Model for a Mechanism of Visual Pattern Recognition
  • 19. On the Spontaneous Emergence of Neuronal Schemata
  • 20. Associative and Competìve Principles of Learning and Development
  • VI. Sensori-Motor Transformations and Learning
  • 21. Modelling Neural Mechanisms of Visuomotor Coordination in Frog and Toad
  • 22. Two-Dimensional Model of Retinal-Tectal-Pretectal Interactions for theControl of Prey-Predator Recognition and Size Preference in Amphibia
  • 23. Tensor Theory of Brain Function:The Cerebellum as a Space-Time Metric
  • 24. Mechanisms of Motor Learning
  • 25. Dynamic and Plastic Properties of the Brain Stem Neuronal Networks as the Possible Neuronal Basis of Learning and Memory
  • I. An Opening Perspective
  • 1. Competitive and Cooperative Aspects in Dynamics of Neural Excitation and Self-Organization
  • II. Reaction-Diffusion Equations
  • 2. Sigmoidal Systems and Layer Analysis
  • 3. Asymptotic Behavior of Stationary Homogeneous Neuronal Nets
  • 4. Aggregation and Segregation Phenomena in Reaction-Diffusion Equations
  • III. Single-Neuron and Stochastic Models
  • 5. Nerve Pulse Interactions
  • 6. Micronetworks in Nerve Cells
  • 7. Role and Use of Noise in Biological Systems
  • 8. Stochastic, Quantal Membrane Conductances and Neuronal Function
  • 9. Diffusion Approximations and Computational Problems for Single Neurons’ Activity
  • 10. Periodic Pulse Sequences Generated by an Analog Neuron Model
  • 11. On a Mathematical Neuron Model
  • IV. Oscillations in Neural Networks
  • 12. Control of Distributed Neural Oscillators
  • 13. Characteristics of Neural Network with Uniform Structure
  • V. Development and Plasticity of the Visual Systems