基于遗传算法和磷虾群的软件聚类问题

M. Akbari, Habib Izadkhah
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引用次数: 9

摘要

聚类技术通常用于对软件系统进行分区,目的是了解软件系统。理解程序有助于维护遗留源代码。由于软件系统的划分是np难题,使用进化方法似乎是合理的。磷虾群(Krill herd, KH)进化算法是一种模拟磷虾个体和群体行为的连续状态空间优化问题的有效算法。根据其性质,是无法解决离散空间问题的。该算法的主要优点是在进化过程中保持了不同个体之间的信息流。遗传算法(GA)是一种利用搜索技术寻找最优解的进化算法;然而,其主要问题是代际之间缺乏强大有效的信息流。本文在磷虾群算法和遗传算法的启发下,提出了一种新的软件聚类进化方法GAKH。在本文提出的进化算法中,通过改变遗传算法周期和算子、加入群体智能以及从磷虾运动中汲取灵感,利用了这两种算法的优势,在软件聚类中取得了较好的结果。该算法在10个软件系统上的初步应用结果表明,与其他算法相比,聚类结果的质量更高。
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Hybrid of genetic algorithm and krill herd for software clustering problem
Clustering techniques are usually utilized to partition a software system, aiming to understand it. Understanding a program helps to maintain the legacy source code. Since the partitioning of a software system is an NP-hard problem, using the evolutionary approaches seems reasonable. Krill herd (KH) evolutionary algorithm is an effective algorithm for solving optimization problems with continuous state space which imitates the individual and group behavior of krill. According to its nature, is unable to solve the discrete space problems. The main advantage of this algorithm is to keep the information flow between different individuals during the evolutionary process. Genetic algorithm (GA) is an evolutionary algorithm utilizing the search techniques to find the closest solution to optimal; however, its main problem is a lack of strong effective information flow between different generations. This paper proposes a new evolutionary method, named GAKH, for software clustering inspired by Krill herd and Genetic algorithm. In the proposed evolutionary algorithm, the strengths of these two algorithms have been utilized and better results have been achieved in software clustering by changing GA cycle and operators, adding swarm intelligence and inspiring from Krill movements. The initial results achieved from the application of the proposed algorithm on ten software systems indicate higher quality results of clustering compared to other algorithms.
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