Regression Testing for Properties of Evolving i*Models

نویسندگان

  • Ralf Laue
  • Arian Storch
چکیده

In software engineering, regression testing allows to validate expected properties of a software after each change of the code. In this paper, we present a tool that transfers this idea to the area of visual modelling, in particular to ı̇∗ modelling. The modeller can select typical properties (expressed in natural language) from a menu. Then these properties will be stored together with the ı̇∗ model and can be verified with every change of the model.

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تاریخ انتشار 2017