Title of article
Counting and Classifying Attractors in High Dimensional Dynamical Systems
Author/Authors
Bagley، نويسنده , , R.J. and Glass، نويسنده , , Leon، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 1996
Pages
16
From page
269
To page
284
Abstract
Randomly connected Boolean networks have been used as mathematical models of neural, genetic and immune systems. A key quantity of such networks is the number of basins of attraction in the state space. The number of basins of attraction changes as a function of the size of the network, its connectivity and its transition rules. In discrete networks, a simple count of the numbers of attractors does not reveal the combinatorial structure of the attractors. These points are illustrated in a reexamination of dynamics in a class of random Boolean networks considered previously by Kauffman. We also consider comparisons between dynamics in discrete networks and continuous analogues. A continuous analogue of a discrete network may have a different number of attractors for many different reasons. Some attractors in discrete networks may be associated with unstable dynamics, and several different attractors in a discrete network may be associated with a single attractor in the continuous case. Special problems in determining attractors in continuous systems arise when there is aperiodic dynamics associated with quasiperiodicity or deterministic chaos.
Journal title
Journal of Theoretical Biology
Serial Year
1996
Journal title
Journal of Theoretical Biology
Record number
1533079
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