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Shape and Content: Incorporating Domain Knowledge into Shape Analysis

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 نشر من قبل Tomer Kotek
 تاريخ النشر 2013
  مجال البحث الهندسة المعلوماتية
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The verification community has studied dynamic data structures primarily in a bottom-up way by analyzing pointers and the shapes induced by them. Recent work in fields such as separation logic has made significant progress in extracting shapes from program source code. Many real world programs however manipulate complex data whose structure and content is most naturally described by formalisms from object oriented programming and databases. In this paper, we look at the verification of programs with dynamic data structures from the perspective of content representation. Our approach is based on description logic, a widely used knowledge representation paradigm which gives a logical underpinning for diverse modeling frameworks such as UML and ER. Technically, we assume that we have separation logic shape invariants obtained from a shape analysis tool, and requirements on the program data in terms of description logic. We show that the two-variable fragment of first order logic with counting and trees %(whose decidability was proved at LICS 2013) can be used as a joint framework to embed suitable fragments of description logic and separation logic.



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