Multi-Objective Genetic Algorithm to Support Class Responsibility Assignment

Michael Bowman, L. Briand, Y. Labiche
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引用次数: 26

Abstract

Class responsibility assignment is not an easy skill to acquire. Though there are many methodologies for assigning responsibilities to classes, they all rely on human judgment and decision making. Our objective is to provide decision-making help to re-assign methods and attributes to classes in a class diagram. Our solution is based on a multi-objective genetic algorithm (MOGA) and uses class coupling and cohesion measurement. Our MOGA takes as input a class diagram to be optimized and suggests possible improvements to it. The choice of a MOGA stems from the fact that there are typically many evaluation criteria that cannot be easily combined into one objective, and several alternative solutions are acceptable for a given OO domain model. This article presents our approach in detail, our decisions regarding the multi-objective genetic algorithm, and reports on a case study. Our results suggest that the MOGA can help correct suboptimal class responsibility assignment decisions.
支持类职责分配的多目标遗传算法
类责任分配不是一项容易掌握的技能。尽管有许多方法可以将职责分配给类,但它们都依赖于人的判断和决策。我们的目标是为类图中的类重新分配方法和属性提供决策帮助。该解决方案基于多目标遗传算法(MOGA),并使用类耦合和内聚度量。我们的MOGA将一个需要优化的类图作为输入,并对它提出可能的改进建议。MOGA的选择源于这样一个事实,即通常存在许多评估标准,这些标准不能轻松地组合到一个目标中,并且对于给定的OO域模型,可以接受几个替代解决方案。本文详细介绍了我们的方法,我们关于多目标遗传算法的决定,并报告了一个案例研究。我们的研究结果表明,MOGA可以帮助纠正次优类职责分配决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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