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Neural Computation, Vol 10, 189-214, Copyright © 1998 by The MIT Press
LETTERS |
Jianfeng Feng and David Brown
Nearly all models in neural networks start from the assumption that the
input-output characteristic is a sigmoidal function. On parameter space, we
present a systematic and feasible method for analyzing the whole spectrum
of attractors -- all-saturated, all-but-one-saturated,
all-but-two-saturated, and so on -- of a neurodynamical system with a
saturated sigmoidal function as its input-output characteristic. We present
an argument that claims, under a mild condition, that only all-saturated or
all-but-one-saturated attractors are observable for the neurodynamics. For
any given all-saturated configuration
(all-but-one-saturated configuration
) the
article shows how to construct an exact parameter region
R(
)(bar-R(
)) such that if and only if the parameters fall
within
R(
)(bar-R(
)), then
(
) is an attractor
(a fixed point of the dynamics). The parameter region for an all-saturated
fixed-point attractor is independent of the specific choice of a saturated
sigmoidal function, whereas for an all-but-one-saturated fixed point, it is
sensitive to the input-output characteristic. Based on a similar idea, the
role of weight normalization realized by a saturated sigmoidal function in
competitive learning is discussed. A necessary and sufficient condition is
provided to distinguish two kinds of competitive learning: stable
competitive learning with the weight vectors representing extremes of input
space and being fixed-point attractors, and unstable competitive learning.
We apply our results to Linsker's model and (using extreme value theory in
statistics) the Hopfield model and obtain some novel results on these two
models.
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