用可变邻域搜索逼近用过程语言编写的遗留软件的基于对象的体系结构

M. Selim, Md. Saeed Siddik, Tajkia Rahman, Alim Ul Gias, S. Khaled
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引用次数: 2

摘要

遗留软件通常用过程语言编写,由于可维护性低,可能成为组织的主要关注点。一种可能的解决方法是将软件迁移到面向对象的体系结构,由于更好的模块化,这种体系结构更容易维护。然而,手动迁移可能会花费大量时间,因此需要一个自动化的过程。这个迁移问题被建模为一个最优图聚类问题,其中顶点和边缘分别由函数和函数调用表示。这个问题的解决是np困难的,因此元启发式基础方法有可能得到接近最优的结果。本文提出了一种可变邻域搜索(VNS)方法来解决建模图聚类问题。该方法提供了一组集群,为面向对象体系结构的可能结构提供了线索。这种方法是基于最小化耦合和最大化集群内聚的目标。对所提算法进行了实现,并将其性能与现有技术进行了比较。与遗传算法和局部搜索启发式算法相比,该方法的结果分别提高了37.15%和12.02%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Approximating object based architecture for legacy software written in procedural languages using Variable Neighborhood Search
Legacy software, often written in procedural languages, could be a major concern for organizations due to low maintainability. A possible way out could be migrating the software to object oriented architecture, which is easier to maintain due to better modularity. However, a manual migration could take significant time and thus an automated process is required. This migration problem has been modeled as an optimal graph clustering problem where vertices and edges are represented by function and function calls respectively. Solution to this problem is NP-hard and thus meta-heuristic base approaches are potential to get near optimal result. This paper presents a Variable Neighborhood Search (VNS) approach for addressing the modeled graph clustering problem. The method provides a set of clusters that gives a clue for possible structure of the object oriented architecture. This approach is based on the objective to minimize the coupling and maximize the cohesion within the clusters. The proposed algorithm was implemented and its performance was compared with state of the art techniques. It is observed that the proposed method produced 37.15% and 12.02% better results in contrast to genetic algorithm and local search heuristics.
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