Kleinberg算法与向量空间模型在软件系统聚类中的应用

G. Scanniello, Anna D'Amico, Carmela D'Amico, Teodora D'Amico
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引用次数: 47

摘要

基于集群的方法通常很难在实践中使用,因为它们需要大量的人工交互来恢复软件架构,是为特定的编程语言构思的,并且通常不使用设计知识(例如,实现的架构模型)。在本文中,我们提出了一种基于聚类的方法来恢复具有层次结构的软件系统的实现体系结构,并且可以用任何面向对象的编程语言实现。该方法基于结构维度和词汇维度的结合。结构维度用于将软件系统分解为层(即水平分解),而词法维度则用于将每一层(即垂直分解)划分为软件模块。层的识别使用一种众所周知且广泛使用的链接分析算法,即Kleinberg算法,而层的垂直分解则使用向量空间模型。为了评估方法和底层技术,我们还展示了一个支持工具的原型,以及对三个开源Java软件系统的后续版本进行的案例研究的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using the Kleinberg Algorithm and Vector Space Model for Software System Clustering
Clustering based approaches are generally difficult to use in practice since they need a significant human interaction for recovering software architectures, are conceived for a specific programming language, and very often do not use design knowledge (e.g., the implemented architectural model). In this paper we present a clustering based approach to recover the implemented architecture of software systems with a hierarchical structure and implemented with any object oriented programming language. The approach is based on the combination of structural and lexical dimensions. The structural dimension is used to decompose a software system into layers (i.e., horizontal decomposition), while the lexical dimension is then employed to partition each layer (i.e., vertical decomposition) into software modules. Layers are identified using a well known and widely employed link analysis algorithm, i.e., the Kleinberg algorithm, while Vector Space Model is used to vertically decompose the layers. To assess the approach and the underlying techniques, we also present a prototype of a supporting tool and the results from a case study conducted on subsequent versions of three open source Java software systems.
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