使用数据挖掘技术识别数据内聚子系统

C. M. D. Oca, D. Carver
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引用次数: 62

摘要

重新设计和维护大型遗留系统的活动涉及到使用设计恢复技术来生成抽象,以促进对系统的理解。提出了一种基于数据挖掘的设计复原方法。这种方法源于这样一种观察,即数据挖掘可以发现大型数据库中元素之间毫无疑问的重要关系。这一观察结果表明,数据挖掘可以用来引出关于主题系统设计的新知识,并且可以应用于大型遗留系统。我们描述了使用数据挖掘来识别数据内聚子系统的ISA方法。通过使用这种方法,我们能够将COBOL系统分解为子系统。我们的经验表明,数据挖掘可以在不了解主题系统的情况下识别数据内聚子系统。此外,无论系统大小如何,数据挖掘都可以产生有意义的结果,因此这种方法特别适合分析大型未记录的系统。
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Identification of data cohesive subsystems using data mining techniques
The activity of reengineering and maintaining large legacy systems involves the use of design recovery techniques to produce abstractions that facilitate the understanding of the system. We present an approach to design recovery based on data mining. This approach derives from the observation that data mining can discover unsuspected non-trivial relationships among elements in large databases. This observation suggests that data mining can be used to elicit new knowledge about the design of a subject system and that it can be applied to large legacy systems. We describe the ISA methodology which uses data mining to identify data cohesive subsystems. We were able to decompose COBOL systems into subsystems by using this approach. Our experience shows that data mining can identify data cohesive subsystems without any previous knowledge of the subject system. Furthermore, data mining can produce meaningful results regardless of system size making this approach especially appropriate to the analysis of large undocumented systems.
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