Enhancing comprehensibility of software clustering results

Faiza Siddique, O. Maqbool
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引用次数: 10

Abstract

As requirements of organisations change, so do the software systems within them. When changes are carried out under tough deadlines, software developers often do not follow software engineering principles, which results in deteriorated structure of the software. A badly structured system is difficult to understand for further changes. To improve structure, re-modularisation may be carried out. Clustering techniques have been used to facilitate automatic re-modularisation. However, clusters produced by clustering algorithms are difficult to comprehend unless they are labelled appropriately. Manual assignment of labels is tiresome, thus efforts should be made towards automatic cluster label assignment. In this study, the authors focus on facilitating comprehension of software clustering results by automatically assigning meaningful labels to clusters. To assign labels, the authors use term weighting schemes borrowed from the domain of information retrieval and text categorisation. Although some term weighting schemes have been used by researchers for software cluster labelling, there is a need to analyse the term weighting schemes and related issues to identify the strengths and weaknesses of these schemes for software cluster labelling. In this context, the authors analyse the behaviour of seven well-known term weighting schemes. Also, they perform the experiments on five software systems to identify software characteristics which affect the labelling behaviour of the term weighting schemes.
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增强软件聚类结果的可理解性
随着组织需求的变化,组织内部的软件系统也会随之变化。当变更在严格的期限下进行时,软件开发人员通常不遵循软件工程原则,这导致软件结构的恶化。一个结构糟糕的系统很难理解进一步的变化。为了改善结构,可以进行重新模块化。聚类技术被用来促进自动重新模块化。然而,由聚类算法产生的聚类很难理解,除非它们被适当地标记。手动分配标签是令人厌烦的,因此应该努力实现自动集群标签分配。在本研究中,作者着重于通过自动为聚类分配有意义的标签来促进软件聚类结果的理解。为了分配标签,作者使用了从信息检索和文本分类领域借鉴的术语加权方案。尽管研究人员已经使用了一些术语加权方案用于软件聚类标记,但仍有必要对术语加权方案和相关问题进行分析,以确定这些方案的优缺点。在这种情况下,作者分析了七个著名的术语加权方案的行为。此外,他们在五个软件系统上进行实验,以确定影响术语加权方案标记行为的软件特征。
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