Stronger Together: On Combining Relationships in Architectural Recovery Approaches

Evelien Boerstra, J. Ahn, J. Rubin
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引用次数: 1

Abstract

Architecture recovery is the process of obtaining the intended architecture of a software system by analyzing its implementation. Most existing architectural recovery approaches rely on extracting information about relationships between code entities and then use the extracted information to group closely related entities together. The approaches differ by the type of relationships they consider, e.g., method calls, data dependencies, and class name similarity. Prior work shows that combining multiple types of relationships during the recovery process is often beneficial as it leads to a better result than the one obtained by using the relationships individually. Yet, most, if not all, academic and industrial architecture recovery approaches simply unify the combined relationships to produce a more complete representation of the analyzed systems. In this paper, we propose and evaluate an alternative approach to combining information derived from multiple relationships, which is based on identifying agreements/disagreements between relationship types. We discuss advantages and disadvantages of both approaches and provide suggestions for future research in this area.
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更强在一起:论建筑恢复方法中的组合关系
体系结构恢复是通过分析软件系统的实现,获得软件系统的预期体系结构的过程。大多数现有的体系结构恢复方法依赖于提取代码实体之间关系的信息,然后使用提取的信息将密切相关的实体分组在一起。这些方法的不同之处在于它们所考虑的关系类型,例如,方法调用、数据依赖性和类名相似性。先前的研究表明,在恢复过程中结合多种类型的关系通常是有益的,因为它比单独使用关系获得的结果更好。然而,大多数(如果不是全部的话)学术和工业架构恢复方法只是简单地将组合的关系统一起来,以产生被分析系统的更完整的表示。在本文中,我们提出并评估了一种基于识别关系类型之间的一致/不一致来组合来自多个关系的信息的替代方法。讨论了两种方法的优缺点,并对今后的研究提出了建议。
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