2001, Volume 4, Number 2, pp.157-193
Patterns of activities of neurons serve as attractors,
since they are those neuronal configurations which correspond to
minimal 'free energy' of the whole system. Namely, they realize
maximal possible agreement among constitutive neurons and are
most-strongly correlated with some environmental pattern. Neuronal
patterns-qua-attractors have both a material and a virtual aspect.
As neuronal patterns, on the one hand, patterns-qua-attractors are
explicit carriers of informational contents. As attractors, on the
other hand, patterns-qua-attractors are implicit mental
representations which acquire a meaning in contextual relations to
other possible patterns.
Recognition of an external pattern is explained as a
(re)construction of the pattern which is the most relevant and
similar to a given environmental pattern. The identity of the
processes of pattern construction, re-construction and Hebbian
short-term storage is realized in a net.
Perceptual processes are here modeled using Kohonen's
topology-preserving feature mapping onto cortex where further
associative processing is continued. To model stratification of
associative processing because of influence from higher brain
areas, Haken's multi-level synergetic network is found to be
appropriate.
The hierarchy of brain processes is of "software"-type, i.e.
virtual, as well as it is of "hardware"-type, i.e. physiological.
It is shown that synergetic and attractor dynamics can
characterize not only neural networks, but also underlying quantum
networks. Neural nets are alone not sufficient for consciousness,
but interaction with the quantum level might provide effects
necessary for consciousness, like, for instance, ultimate binding
of perceptual features into an unified experience.
It is
mathematically demonstrated that associative neural networks
realize information processing analogous to the quantum dynamics.
Parallels in the formalism of neural models and quantum theory are
listed. Basic elements of the quantum versus neural system
(modeled by formal neurons and connections) are very different,
but their collective processes obey similar laws. Specifically, it
is shown that neuron's weighted spatio-temporal integration of
signals corresponds to the Feynman's version of the
Schrödinger equation. In the first case weights are synaptic
strengths determined by the Hebb or delta correlation rule; in the
second case weights are Green functions or density matrices. In
both cases encodings of pattern-correlations represent memory.
(Re)construction of a neuronal pattern-qua-attractor is analogous
to the "wave-function collapse". Transformations of memory (or
sub-conscious) representations to a conscious representation is
modeled in the same way.
Found mathematical analogies allow translation of the neural-net
"algorithm", which in author's simulations works very well, into a
quantum one. This indicates how such quantum networks, which might
be exploited by the sub-cellular levels of brain, could process
information efficiently and also make it conscious.
Key words: neural net, quantum, brain, associative, synergetic,
perception, consciousness
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