Skip to main content
Home
Self-organizing Systems Lab
Universidad Nacional Autónoma de México

Main menu

  • Home
  • Welcome
  • People
  • Research
  • Publications
  • Presentations
  • Software
  • Events
  • Media

You are here

Home

Search form

Navigation

  • Biblio
    • Authors
    • Keywords
  • Calendar
  • Forums
  • Popular content
  • Recent content
  • Feed aggregator

User login

  • Request new password

Biblio

Export 3 results:
  • BibTeX
  • RTF
  • Tagged
  • MARC
  • EndNote XML
  • RIS
Author Keyword Title Type [ Year(Asc)]
Filters: Author is Mikhail Prokopenko  [Clear All Filters]
2014
N. Fernández, Maldonado, C., and Gershenson, C., “Information Measures of Complexity, Emergence, Self-organization, Homeostasis, and Autopoiesis”, in Guided Self-Organization: Inception, M. Prokopenko, Ed. Springer, 2014, pp. 19-51.
  • Google Scholar
  • BibTeX
  • RTF
  • Tagged
  • MARC
  • EndNote XML
  • RIS
PDF icon InfoGSO.pdf (13.3 MB)
2011
C. Gershenson and Prokopenko, M., “Complex Networks”, Artificial Life, vol. 17, pp. 259–261, 2011.
  • DOI
  • Google Scholar
  • BibTeX
  • RTF
  • Tagged
  • MARC
  • EndNote XML
  • RIS
2007
S. Bae Cools, Gershenson, C., and D'Hooghe}, B. {, “Self-organizing traffic lights: A realistic simulation”, in Self-Organization: Applied Multi-Agent Systems, M. Prokopenko, Ed. Springer, 2007, pp. 41–49.
  • DOI
  • Google Scholar
  • BibTeX
  • RTF
  • Tagged
  • MARC
  • EndNote XML
  • RIS

Recent Publications

  • On two information-theoretic measures of random fuzzy networks
  • Ecosystem antifragility: beyond integrity and resilience
  • Boolean Networks and Their Applications in Science and Engineering
  • Forecasting of Population Narcotization under the Implementation of a Drug Use Reduction Policy
More...

Complexity Digest

  • Strong connectivity in real directed networks
  • The impact of signal variability on epidemic growth rate estimation from wastewater surveillance data
  • Stocks and cryptocurrencies: Antifragile or robust? A novel antifragility measure of the stock and cryptocurrency markets
  • Using Markov chains and temporal alignment to identify clinical patterns in Dementia
  • Structure-based approach can identify driver nodes in ensembles of biologically-inspired Boolean networks
More

Syndicate

Subscribe to Syndicate
Powered by Drupal