Automated mapping of fault logs to SRS requirements using key-phrase extraction

Maninder Singh, G. Walia
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引用次数: 1

Abstract

Software requirement specification (SRS) document contains faults due to the inherent ambiguous nature of natural language (NL). These faults are identified and reported (using fault logs) through inspections and are handed back to the requirements author for fixations. This process is very manual, time consuming and a lot of efforts is spent on re-inspection of the SRS document while fault fixations. An automated approach is needed that can map fault logs to faulty requirements and to other similar requirements. The automated approach could enable large fault coverage and can reduce significant manual re-inspection time and efforts. Our proposed approach extracts the key-phrases to identify key problems from fault-logs, and then maps them back to group of similar requirements in an SRS document to inspect requirements that may contain a similar types of faults. Our approach uses key-phrase extraction algorithms, semantic analysis models and clustering approaches to map faults to requirements. We evaluated the mapping of faults to requirements in our approach using two widely used semantic analysis models (i.e., Latent Semantic Analysis and Latent Dirichlet Allocation) with the evaluation performed by the domain expert. Our results have been promising and have showed a large potential to support additional decision making during fault fixations.
使用关键字提取将故障日志自动映射到SRS需求
由于自然语言固有的模糊性,软件需求规范(SRS)文档中存在错误。通过检查识别和报告这些故障(使用故障日志),并将其提交给需求作者进行修复。这个过程非常手动,耗时,并且在修复故障时需要花费大量精力重新检查SRS文档。需要一种能够将故障日志映射到故障需求和其他类似需求的自动化方法。自动化方法可以实现大范围的故障覆盖,并且可以减少大量的人工重新检查时间和工作。我们提出的方法从故障日志中提取关键短语来识别关键问题,然后将它们映射回SRS文档中的类似需求组,以检查可能包含类似类型故障的需求。我们的方法使用关键短语提取算法、语义分析模型和聚类方法将故障映射到需求。在我们的方法中,我们使用两种广泛使用的语义分析模型(即潜在语义分析和潜在狄利克雷分配)来评估故障到需求的映射,并由领域专家进行评估。我们的结果很有希望,并且显示了在故障修复期间支持额外决策制定的巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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