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The robustness and mutual information entropy of random modular Boolean networks

  • Beihang University

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Random Boolean networks have been proposed as a basic model of genetic regulatory networks for more than four decades. Attractors have been considered as the best way to represent the long-term behaviors of random Boolean networks. Most studies on attractors are made with random topologies. However, the real regulatory networks have been found to be modular or more complex topologies. In this work, we extend classical robustness and entropy analysis of random Boolean networks to random modular Boolean networks. We firstly focus on the robustness of the attractor to perturbations with different parameters. Then, we investigate and calculate how the amount of information propagated between the nodes when on an attractor, as quantified by the average pairwise mutual information. The results can be used to study the capability of genetic information propagation of different types of genetic regulatory networks.

Original languageEnglish
Title of host publicationMaterials Science, Computer and Information Technology
PublisherTrans Tech Publications Ltd
Pages4417-4420
Number of pages4
ISBN (Print)9783038351733
DOIs
StatePublished - 2014
Event4th International Conference on Materials Science and Information Technology, MSIT 2014 - Tianjin, China
Duration: 14 Jun 201415 Jun 2014

Publication series

NameAdvanced Materials Research
Volume989-994
ISSN (Print)1022-6680
ISSN (Electronic)1662-8985

Conference

Conference4th International Conference on Materials Science and Information Technology, MSIT 2014
Country/TerritoryChina
CityTianjin
Period14/06/1415/06/14

Keywords

  • Boolean network
  • Dynamical analysis
  • Information entropy

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