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Thursday, March 23, 200610:00 AM - 11:00 AMCNLS Conference Room (TA-3, Bldg 1690) Seminar Topological self-organization and critical dynamics of input-driven Thimo RohlfSanta Fe Institute Based on a simple model of network self-organization by local rewiring
rules \cite{BornholdtRohlf2000}, we study topological evolution of
input-driven neural threshold networks. In addition to the original
system analyzed in \cite{BornholdtRohlf2000}, a subset of network nodes
is driven by external input signals with a spiking rate $\rho_{in}$,
that serves as a convenient new control parameter. Depending on
$\rho_{in} > 0$, we find a much faster convergence towards topological
and dynamical criticality \cite{RohlfBornholdt2002} than in the original
model (which has $\rho_{in} = 0$). In particular, our extensive
numerical simulations indicate that, at a critical driving rate
$\rho_{in}^c(N)$, networks become self-organized critical even for
finite numbers $N$ of nodes. Several dynamical order parameters exhibit
pronounced power-law scaling, long-range correlations and 1/f noise
(including, e.g., the distribution of asymptotic Hamming distances of
initially nearby system states). Finally, we discuss possible
applications of this model to problems in two fields: control of neural
activity in the brain, and the evolution of signal processing by gene
regulatory networks in biological cells.
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