An Algebra for Features and Feature Composition

نویسندگان

  • Sven Apel
  • Christian Lengauer
  • Bernhard Möller
  • Christian Kästner
چکیده

Feature-Oriented Software Development (FOSD) provides a multitude of formalisms, methods, languages, and tools for building variable, customizable, and extensible software. Along different lines of research, different notions of a feature have been developed. Although these notions have similar goals, no common basis for evaluation, comparison, and integration exists. We present a feature algebra that captures the key ideas of feature orientation and provides a common ground for current and future research in this field, in which also alternative options can be explored.

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تاریخ انتشار 2008