Skip to main content
Presentation
Data Mining With Cellular Discrete Event Modeling and Simulation
ANSS'12: Proceedings of the 45th Annual Simulation Symposium, Spring Simulation Multiconference, SpringSim (2012)
  • Shafagh Jafer, University of Virginia's College at Wise
  • Yasser Jafer, University of Ottawa
  • Gabriel Wainer, Carleton University
Abstract
"Data mining is the process of extracting patterns from data. A main step in this process is referred to as data classification. In this work, we investigate the use of the Cell-DEVS formalism for classifying data. The cells in a Cell-DEVS based grid are individually very simple but together they can represent complex behavior and are capable of self-organization. Three classifier models are implemented using Cell-DEVS. Different simulation scenarios are presented investigating the effect of Von Neumann versus Moore neighborhood in the classifiers' models. We show that effective classification performance, comparable to those produced by complex data mining techniques, can be obtained from the collective behavior of discrete-event cellular grids."--From the paper.
Keywords
  • data mining,
  • Cell-DEVS,
  • classification,
  • cellular discrete event simulation
Publication Date
March, 2012
Location
Orlando, FL
Citation Information
Shafagh Jafer, Yasser Jafer and Gabriel Wainer. "Data Mining With Cellular Discrete Event Modeling and Simulation" ANSS'12: Proceedings of the 45th Annual Simulation Symposium, Spring Simulation Multiconference, SpringSim (2012)
Available at: http://works.bepress.com/shafagh_jafer/17/