No subject
Tue Jun 6 06:52:25 EDT 2006
networks, it is easy to see that an "instantaneous" multi-layer
network combined with delays/integrators in the feedback loop can
approximate arbitrary discrete/continuous-time dynamical systems.
A question of interest is whether it can be done when all the units
have intrinsic delays/integrators. The answer is yes, if we use a
distributed representation of the state space. (6 pages)
----It is a simple problem someone might have already solved.
I appreciate any reference to previous works.
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Bifurcations of Recurrent Neural Networks
in Gradient Descent Learning
Kenji Doya, UCSD
Asymptotic behavior of a recurrent neural network changes
qualitatively at certain points in the parameter space, which are
known as ``bifurcation points''. At bifurcation points, the output of
a network can change discontinuously with the change of parameters and
therefore convergence of gradient descent algorithms is not
guaranteed. Furthermore, learning equations used for error gradient
estimation can be unstable. However, some kinds of bifurcations are
inevitable in training a recurrent network as an automaton or an
oscillator. Some of the factors underlying successful training of
recurrent networks are investigated, such as choice of initial
connections, choice of input patterns, teacher forcing, and truncated
learning equations. (11 pages)
----It is (to be) an extended version of "doya.bifurcation.ps.Z".
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Dimension Reduction of Biological Neuron Models
by Artificial Neural Networks
Kenji Doya and Allen I. Selverston, UCSD
An artificial neural network approach for dimension reduction of
dynamical systems is proposed and applied to conductance-based neuron
models. Networks with bottleneck layers of continuous-time dynamical
units could make a 2-dimensional model from the trajectories of the
Hodgkin-Huxley model and a 3-dimensional model from the trajectories
of a 6-dimensional bursting neuron model. Nullcline analysis of these
reduced models revealed the bifurcations of the neuronal dynamics
underlying firing and bursting behaviors. (17 pages)
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FTP INSTRUCTIONS
unix% ftp archive.cis.ohio-state.edu (or 128.146.8.52)
Name: anonymous
Password: neuron
ftp> cd pub/neuroprose
ftp> binary
either
ftp> get doya.universality.ps.Z
ftp> get doya.bifurcation2.ps.Z
ftp> get doya.dimension.ps.Z
or
ftp> mget doya.*
rehtie
ftp> bye
unix% zcat doya.universality.ps.Z | lpr
unix% zcat doya.bifurcation2.ps.Z | lpr
unix% zcat doya.dimension.ps.Z | lpr
These files are also available for anonymous ftp from
crayfish.ucsd.edu (132.239.70.10), directory "pub/doya".
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