基于ES的自动化软件聚类方法实现一致性分解

B. Khan, S. Sohail
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引用次数: 1

摘要

任何软件的有效寿命可以通过适当和最新的维护增加许多倍。自动化软件模块集群是软件专业人员使用的一种方法,通过将系统分解为包含相互依赖模块的更小的可管理子系统来恢复系统的高层结构。一旦系统的结构清晰,任何系统的适当维护的理解都可以实现。我们提出了一种基于进化策略原理的自动聚类方法,用于搜索由模块及其关系组成的大解空间。我们的方法试图实现由独立子系统组成的接近最优的分解,包含相互依赖的模块。我们将我们提出的方法与广泛使用的基于遗传算法的聚类技术进行了比较,我们的方法在所有测试用例中都表现得更好。在本文中,我们强调了我们方法的一个显著特征:结果的一致性。对于任何一种优化算法,在相同的数据上不同的算法执行都不可能得到完全相似的结果。然而,结果应该保持接近,不应该有太大的变化。我们使用一组测试系统对我们的方法和基于遗传算法的方法进行了比较研究。与基于遗传算法的方法相比,该方法的结果总是一致的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using ES Based Automated Software Clustering Approach to Achieve Consistent Decompositions
Effective life time of any software can be increased many folds by proper and up to date maintenance. Automated software module clustering is a method used by software professionals to recover high-level structure of the system by decomposing the system into smaller manageable subsystems, containing interdependent modules. Once the structure of the system is clear, the understanding of any system for proper maintenance can be achieved. We have proposed an automated clustering approach based on the principles of Evolution Strategies to search a large solution space consisting of modules and their relationships. Our approach tries to achieve near optimal decompositions consisting of independent subsystems, containing interdependent modules. We have compared our proposed approach with a widely used Genetic Algorithm based clustering technique and our approach worked better in all test cases. In this paper, we are highlighting one distinguishing feature of our approach: the consistency in results. For any optimization algorithm, exactly similar results in different executions of the algorithm on same data cannot be achieved. However, the results should remain in close proximity and should not change drastically. We have carried out a comparative study of our approach and the Genetic Algorithm based approach using a set of test systems. The results with our approach are always consistent than those produced by the Genetic Algorithm based approach.
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