Improving Design Pattern Instance Recognition by Dynamic Analysis
نویسنده
چکیده
Design pattern instance recognition is often done by static analysis, thus approaches are limited to the recognition of static parts of design patterns. The dynamic behavior of patterns is disregarded and leads to lots of false positives during recognition. This paper presents an approach to combine the advantages of static and dynamic analyses to overcome this problem and improve the design pattern instance recognition.
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