نویسنده
Elyasi, Milad, Simitcioğlu, Muhammed Esad, Saydemir, Abdullah, Ekici, Ali, Özener, Okan Örsan, Sözer, Hasan
تاریخ انتشار
2023-06-26
محل انتشار
-
Springer
موضوع
Genetic algorithms, Reverse engineering, Software architecture recovery, Software modularity, Software module clustering
نوع
دوره ای
زبان
انگلیسی
دیجیتال
بله
نسخه خطی
خیر
کتابخانه
دانشگاه اوزیغین
شناسه دارایی کتابخانه
0928-8910
شماره ثبت
54a939fa-f09c-4247-a765-46f3ffc22da2
محل کتابخانه
Industrial Engineering, Computer Science
تاریخ
2023-06-26
یادداشتها
TÜBİTAK
متن نمونه
Large scale software systems must be decomposed into modular units to reduce maintenance efforts. Software Architecture Recovery (SAR) approaches have been introduced to analyze dependencies among software modules and automatically cluster them to achieve high modularity. These approaches employ various types of algorithms for clustering software modules. In this paper, we discuss design decisions and variations in existing genetic algorithms devised for SAR. We present a novel hybrid genetic algorithm that introduces three major differences with respect to these algorithms. First, it employs a greedy heuristic algorithm to automatically determine the number of clusters and enrich the initial population that is generated randomly. Second, it uses a different solution representation that facilitates an arithmetic crossover operator. Third, it is hybridized with a heuristic that improves solutions in each iteration. We present an empirical evaluation with seven real systems as experimental objects. We compare the effectiveness of our algorithm with respect to a baseline and state-of-the-art hybrid genetic algorithms. Our algorithm outperforms others in maximizing the modularity of the obtained clusters.
DOI
10.1007/s10515-023-00384-y
Cilt
30