Data Mining from Process Models: Visualizations or Induction for Better Comprehension?
نویسندگان
چکیده
An extended abstract for ProSim’04 May 24-25, 2004 http://www.prosim.pdx.edu/prosim2004 A standard methodology in the process simulation community is to build simulations using high-end visual programming (VP) system with powerful graphical front-ends. Many such VP tools exist including Vensim (see Figure 1), the Statemate state-based simulation model by i-Logix 1, the Extend discrete event simulation tool 2, just to name a few. Various benefits come from these VP tools including acceptance, debugging support and increased comprehension of the models.
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