网络分析技术能帮助预测设计依赖关系吗?初步研究

J. A. D. Pace, Antonela Tommasel, D. Godoy
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引用次数: 4

摘要

软件系统模块之间的依赖程度是描述其设计结构及其随时间发展的能力的关键属性。一些设计问题通常与模块之间不期望的依赖关系相关。能够预测这些问题对开发人员来说很重要,这样他们就可以及早计划维护和重构工作。然而,现有的工具仅限于检测系统中出现的不需要的依赖项。在这项工作中,我们研究了模块依赖是否可以预测(在它们实际出现之前)。由于模块结构可以看作是一个网络,即一个依赖图,我们利用网络特征来分析这种结构的动态。特别地,我们将链接预测技术应用于该任务。我们使用链接预测和机器学习技术对两个跨多个版本的Java项目进行了评估,并评估了它们在识别从一个项目版本到下一个项目版本的新依赖关系方面的性能。虽然初步的结果表明,链接预测方法对于包依赖项是可行的。此外,这项工作为进一步开发特定于软件的依赖预测策略提供了机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Can Network Analysis Techniques Help to Predict Design Dependencies? An Initial Study
The degree of dependencies among the modules of a software system is a key attribute to characterize its design structure and its ability to evolve over time. Several design problems are often correlated with undesired dependencies among modules. Being able to anticipate those problems is important for developers, so they can plan early for maintenance and refactoring efforts. However, existing tools are limited to detecting undesired dependencies once they appeared in the system. In this work, we investigate whether module dependencies can be predicted (before they actually appear). Since the module structure can be regarded as a network, i.e, a dependency graph, we leverage on network features to analyze the dynamics of such a structure. In particular, we apply link prediction techniques for this task. We conducted an evaluation on two Java projects across several versions, using link prediction and machine learning techniques, and assessed their performance for identifying new dependencies from a project version to the next one. The results, although preliminary, show that the link prediction approach is feasible for package dependencies. Also, this work opens opportunities for further development of software-specific strategies for dependency prediction.
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