Models of Neural Networks

Models of Neural Networks: Temporal Aspects of Coding and Information Processing in Biological Systems

Models of Neural Networks: Temporal Aspects of Coding and Information Processing in Biological Systems by Eytan Domany, J. Leo Hemmen, Klaus Schulten
English | PDF | 1994 | Pages | ISBN : 0387943625 | 34.9 MB

Since the appearance of Vol. 1 of Models of Neural Networks in 1991, the theory of neural nets has focused on two paradigms: information coding through coherent firing of the neurons and functional feedback. Information coding through coherent neuronal firing exploits time as a cardinal degree of freedom. This capacity of a neural network rests on the fact that the neuronal action potential is a short, say 1 ms, spike, localized in space and time. Spatial as well as temporal correlations of activity may represent different states of a network. In particular, temporal correlations of activity may express that neurons process the same "object" of, for example, a visual scene by spiking at the very same time. The traditional description of a neural network through a firing rate, the famous S-shaped curve, presupposes a wide time window of, say, at least 100 ms. It thus fails to exploit the capacity to "bind" sets of coherently firing neurons for the purpose of both scene segmentation and figure-ground segregation. Feedback is a dominant feature of the structural organization of the brain. Recurrent neural networks have been studied extensively in the physical literature, starting with the ground breaking work of John Hop­ field (1982).
Advanced Models of Neural Networks: Nonlinear Dynamics and Stochasticity in Biological Neurons (Repost)

Gerasimos G. Rigatos, "Advanced Models of Neural Networks: Nonlinear Dynamics and Stochasticity in Biological Neurons"
English | 2014 | ISBN: 3662437635 | PDF | pages: 296 | 8.8 mb
Advanced Models of Neural Networks: Nonlinear Dynamics and Stochasticity in Biological Neurons

Advanced Models of Neural Networks: Nonlinear Dynamics and Stochasticity in Biological Neurons By Gerasimos Rigatos
2015 | 296 Pages | ISBN: 3662437635 | PDF | 9 MB

Physical Models of Neural Networks  eBooks & eLearning

Posted by arundhati at May 3, 2014
Physical Models of Neural Networks

Tamas Geszti, "Physical Models of Neural Networks"
1990 | ISBN-10: 9810200129 | 250 pages | PDF | 5 MB

Models of Neural Networks (Physics of Neural Networks)  eBooks & eLearning

Posted by ksenya.b at July 19, 2015
Models of Neural Networks (Physics of Neural Networks)

Models of Neural Networks (Physics of Neural Networks) by Eytan Domany, J. Leo van Hemmen, Klaus Schulten
PDF | 1991 | 357 pages | ISBN: 3642971733, 0387511091 | English | 10 MB

Models of Neural Networks IV: Early Vision and Attention  eBooks & eLearning

Posted by insetes at Feb. 21, 2019
Models of Neural Networks IV: Early Vision and Attention

Models of Neural Networks IV: Early Vision and Attention By J. A. Hertz (auth.), J. Leo van Hemmen, Jack D. Cowan, Eytan Domany (eds.)
2002 | 413 Pages | ISBN: 1441928758 | PDF | 20 MB

Models of Neural Networks III: Association, Generalization, and Representation  eBooks & eLearning

Posted by insetes at Dec. 2, 2024
Models of Neural Networks III: Association, Generalization, and Representation

Models of Neural Networks III: Association, Generalization, and Representation By Andreas V. M. Herz (auth.), Professor Eytan Domany, Professor Dr. J. Leo van Hemmen, Professor Klaus Schulten (eds.)
1996 | 311 Pages | ISBN: 1461268826 | PDF | 12 MB

Models of Neural Networks I  eBooks & eLearning

Posted by insetes at Dec. 31, 2024
Models of Neural Networks I

Models of Neural Networks I By J. Leo van Hemmen, Reimer Kühn (auth.), Professor Eytan Domany, Professor Dr. J. Leo van Hemmen, Professor Klaus Schulten (eds.)
1995 | 355 Pages | ISBN: 3642798160 | PDF | 10 MB

Models of Neural Networks I  eBooks & eLearning

Posted by AvaxGenius at April 19, 2025
Models of Neural Networks I

Models of Neural Networks I by Eytan Domany, J. Leo Hemmen, Klaus Schulten
English | PDF | 1995 | 371 Pages | ISBN : 3642798160 | 33.6 MB

One of the great intellectual challenges for the next few decades is the question of brain organization. What is the basic mechanism for storage of memory? What are the processes that serve as the interphase between the basically chemical processes of the body and the very specific and nonstatistical operations in the brain? Above all, how is concept formation achieved in the human brain? I wonder whether the spirit of the physics that will be involved in these studies will not be akin to that which moved the founders of the "rational foundation of thermodynamics". C. N. Yang! 10 The human brain is said to have roughly 10 neurons connected through about 14 10 synapses. Each neuron is itself a complex device which compares and integrates incoming electrical signals and relays a nonlinear response to other neurons. The brain certainly exceeds in complexity any system which physicists have studied in the past. Nevertheless, there do exist many analogies of the brain to simpler physical systems. We have witnessed during the last decade some surprising contributions of physics to the study of the brain. The most significant parallel between biological brains and many physical systems is that both are made of many tightly interacting components.

Neural Networks with Discontinuous/Impact Activations  eBooks & eLearning

Posted by ChrisRedfield at May 15, 2014
Neural Networks with Discontinuous/Impact Activations

Marat Akhmet, ‎Enes Yılmaz - Neural Networks with Discontinuous/Impact Activations
Published: 2013-11-13 | ISBN: 1461485657 | PDF | 213 pages | 3 MB