کلمات کلیدی مربوط به کتاب مدل های شبکه های عصبی II. جنبه های زمانی کدگذاری و پردازش اطلاعات در سیستم های بیولوژیکی: علوم و مهندسی کامپیوتر، هوش مصنوعی، شبکه های عصبی
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توجه داشته باشید کتاب مدل های شبکه های عصبی II. جنبه های زمانی کدگذاری و پردازش اطلاعات در سیستم های بیولوژیکی نسخه زبان اصلی می باشد و کتاب ترجمه شده به فارسی نمی باشد. وبسایت اینترنشنال لایبرری ارائه دهنده کتاب های زبان اصلی می باشد و هیچ گونه کتاب ترجمه شده یا نوشته شده به فارسی را ارائه نمی دهد.
Издательство Springer, 1995, -354 pp.
The second volume of the Physics of
Neural Networks series.
Models of Neural Networks I
(
/file/1427677/)
Models of Neural Networks II. Temporal Aspects of Coding and
Information Processing in Biological Systems (
/file/1427678/)
Models of Neural Networks III. Association, Generalization, and
Representation (
/file/1427679/)
Models of Neural Networks IV. Early Vision and Attention
(
/file/1427681/)
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 Hopfield (1982). Functional
feedback arises between the specialized areas of the brain
involved, for instance, in vision when a visual scene generates
a picture on the retina, which is transmitted to the lateral
geniculate body (LGN), the primary visual cortex, and then to
areas with "higher" functions. This sequence looks like a
feed-forward structure, but appearances are deceiving, for
there are equally strong recurrent signals. One wonders what
they are good for and how they influence or regulate coherent
spiking. Their role is explained in various contributions to
this volume, which provides an in-depth analysis of the two
paradigms. The reader can enjoy a detailed discussion of
salient features such as coherent oscillations and their
detection, associative binding and segregation, Hebbian
learning, and sensory computations in the visual and olfactory
cortex.
Each volume of Models of Neural Networks begins with a longer
paper that puts together some theoretical foundations. Here the
introductory chapter, authored by Gerstner and van Hemmen, is
devoted to coding and information processing in neural networks
and concentrates on the fundamental notions that will be used,
or treated, in the papers to follow.
More than 10 years ago Christoph von der Malsburg wrote the
meanwhile classical paper "The correlation theory of brain
function." For a long time this paper was available only as an
internal report of the Max-Planck Institute for Biophysical
Chemistry in Gottingen, Germany, and is here made available to
a wide audience. The reader may verify that notions which
seemed novel 10 years ago still are equally novel at
present.
The paper "Firing rates and well-timed events in the cerebral
cortex" by Moshe Abeles does exactly what its title announces.
In particular, Abeles puts forward cogent arguments that the
firing rate by itself does not suffice to describe neuronal
firing. Wolf Singer presents a careful analysis of "The role of
synchrony in neocortical processing and synaptic plasticity"
and in so doing explains what coherent firing is good for. This
essay is the more interesting since he focuses on the relation
between coherence - or synchrony - and oscillatory behavior of
spiking on a global, extensive scale.
This connection is taken up by Ritz et al. in their paper
"Associative binding and segregation in a network of spiking
neurons." Here one finds a synthesis of scene segmentation and
binding in the associative sense of pattern completion in a
network where neural coding is by spikes only. Moreover, a
novel argument is presented to show that a hierarchical
structure with feed-forward and feedback connections may play a
dominant role in context sensitive binding. We consider this an
explicit example of functional feedback as a "higher" area
provides the context to data presented to several "lower"
areas.
Coherent oscillations were known in the olfactory system long
before they were discovered in the visual cortex. Zhaoping Li
describes her work with John Hopfield in the paper "Modeling
the sensory computations of the olfactory bulb." She shows that
here too it is possible to describe both odor recognition and
segmentation by the very same model.
Until now we have used the notions "coherence" and
"oscillation" in a loose sense. One may ask: How can one attain
the goal of "Detecting coherence in neuronal data?" Precisely
this is explained by Klaus Pawelzik in his paper with the above
title. He presents a powerful information-theoretic algorithm
in detail and illustrates his arguments by analyzing real data.
This is important not only for the experimentalist but also for
the theoretician who wants to verify whether his model exhibits
some kind of coherence and, if so, what kind of agreement with
experiment is to be expected.
As is suggested by several papers in this volume, there seems
to be a close connection between coherence and synaptic
plasticity; see, for example, the essay by Singer {Secs. 13 and
14) and Chap. 1 by Gerstner and van Hemmen. Synaptic plasticity
itself, a fascinating subject, is expounded by Brown and
Chattarji in their paper "Hebbian synaptic plasticity." By now
long-term depression is appreciated as an essential element of
the learning process or, as Willshaw aptly phrased it, "What
goes up must come down." On the other hand, Hebb's main idea,
correlated activity of the preand postsynaptic neuron, has been
shown to be a necessary condition for the induction of
long-term potentiation but the appropriate time window of
synchrony has not been determined unambiguously yet. A small
time window in the millisecond range would allow to learn,
store, and retrieve spatio-temporal spike patterns, as has been
pointed out by Singer and implemented by the Hebbian algorithm
of Gerstner et al. Whether or not such a small time window may
exist is still to be shown experimentally.
A case study of functional feedback or, as they call it,
reentry is provided by Sporns, Tononi, and Edelman in the essay
"Reentry and dynamical interactions of cortical networks."
Through a detailed numerical simulation these authors analyze
the problem of how neural activity in the visual cortex is
integrated given its functional organization in the different
areas. In a sense, in this chapter the various parts of a large
puzzle are put together and integrated so as to give a
functional architecture. This integration, then, is sure to be
the subject of a future volume of Models of Neural Networks.
Coding and Information Processing in
Neural Networks
The Correlation Theory of Brain Function
Firing Rates and Well-Timed Events in the Cerebral
The Role of Synchrony in Neocortical Processing and Synaptic
Plasticity
Associative Binding and Segregation in a Network of Spiking
Neurons
Modeling the Sensory Computations of the Olfactory Bulb
Detecting Coherence in Neuronal Data
Hebbian Synaptic Plasticity: Evolution of the Contemporary
Concept
Reentry and Dynamical Interactions of Cortical Networks