Ten years of JDeodorant: Lessons learned from the hunt for smells

Nikolaos Tsantalis, Theodoros Chaikalis, A. Chatzigeorgiou
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引用次数: 37

Abstract

Deodorants are different from perfumes, because they are applied directly on body and by killing bacteria they reduce odours and offer a refreshing fragrance. That was our goal when we first thought about "bad smells" in code: to develop techniques for effectively identifying and removing (i.e., deodorizing) code smells from object-oriented software. JDeodorant encompasses a number of techniques for suggesting and automatically applying refactoring opportunities on Java source code, in a way that requires limited effort on behalf of the developer. In contrast to other approaches that rely on generic strategies that can be adapted to various smells, JDeodorant adopts ad-hoc strategies for each smell considering the particular characteristics of the underlying design or code problem. In this retrospective paper, we discuss the impact of JDeodorant over the last ten years and a number of tools and techniques that have been developed for a similar purpose which either compare their results with JDeodorant or have built on top of JDeodorant. Finally, we discuss the empirical findings from a number of studies that employed JDeodorant to extract their datasets.
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JDeodorant的十年:寻找气味的经验教训
除臭剂不同于香水,因为它们直接涂抹在身体上,通过杀死细菌来减少气味,提供一种清新的香味。当我们第一次想到代码中的“难闻气味”时,这就是我们的目标:开发技术来有效地识别和去除(即除臭)面向对象软件中的代码气味。JDeodorant包含了许多建议和自动应用Java源代码重构机会的技术,以一种对开发人员要求有限的方式。与其他依赖于可适应各种气味的通用策略的方法不同,JDeodorant根据底层设计或代码问题的特定特征,对每种气味采用特殊策略。在这篇回顾性的论文中,我们讨论了JDeodorant在过去十年中的影响,以及为类似目的而开发的一些工具和技术,这些工具和技术要么将它们的结果与JDeodorant进行比较,要么构建在JDeodorant之上。最后,我们讨论了一些使用JDeodorant提取数据集的研究的实证结果。
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