Search Budget in Multi-Objective Refactoring optimization: a Model-Based Empirical Study

Daniele Di Pompeo, Michele Tucci
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引用次数: 8

Abstract

Software model optimization is the task of automatically generate design alternatives, usually to improve quality aspects of software that are quantifiable, like performance and reliability. In this context, multi-objective optimization techniques have been applied to help the designer find suitable tradeoffs among several non-functional properties. In this process, design alternatives can be generated through automated model refactoring, and evaluated on non-functional models. Due to their complexity, this type of optimization tasks require considerable time and resources, often limiting their application in software engineering processes.In this paper, we investigate the effects of using a search budget, specifically a time limit, to the search for new solutions. We performed experiments to quantify the impact that a change in the search budget may have on the quality of solutions. Furthermore, we analyzed how different genetic algorithms (i.e., NSGh-II, SPEh2, and PESA2) perform when imposing different budgets. We experimented on two case studies of different size, complexity, and domain.We observed that imposing a search budget considerably deteriorates the quality of the generated solutions, but the specific algorithm we choose seems to play a crucial role. From our experiments, NSGh-II is the fastest algorithm, while PESA2 generates solutions with the highest quality. Differently, SPEh2 is the slowest algorithm, and produces the solutions with the lowest quality.
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多目标重构优化中的搜索预算:基于模型的实证研究
软件模型优化是自动生成设计备选方案的任务,通常是为了改进可量化的软件质量方面,如性能和可靠性。在这种情况下,多目标优化技术被应用于帮助设计者在几个非功能属性之间找到合适的权衡。在此过程中,可以通过自动模型重构生成设计备选方案,并在非功能模型上进行评估。由于其复杂性,这种类型的优化任务需要大量的时间和资源,通常限制了它们在软件工程过程中的应用。在本文中,我们研究了使用搜索预算,特别是时间限制,对搜索新解决方案的影响。我们进行了实验来量化搜索预算的变化对解决方案质量的影响。此外,我们分析了不同的遗传算法(即NSGh-II, SPEh2和PESA2)在施加不同预算时的表现。我们对两个不同规模、复杂性和领域的案例研究进行了实验。我们观察到,强加搜索预算大大降低了生成解决方案的质量,但我们选择的特定算法似乎起着至关重要的作用。从我们的实验来看,NSGh-II是最快的算法,而PESA2生成的解质量最高。不同的是,SPEh2是最慢的算法,产生的解质量最低。
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