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The Design of SREE - A Prototype Potential Ambiguity Finder for Requirements Specifications and Lessons Learned

机译:Sree的设计 - 用于要求规格和经验教训的原型潜在模糊发现器

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[Context and Motivation] Many a tool for finding ambiguities in natural language (NL) requirements specifications (RSs) is based on a parser and a parts-of-speech identifier, which are inherently imperfect on real NL text. Therefore, any such tool inherently has less than 100% recall. Consequently, running such a tool on a NL RS for a highly critical system does not eliminate the need for a complete manual search for ambiguity in the RS. [Question/Problem] Can an ambiguity-finding tool (AFT) be built that has 100% recall on the types of ambiguities that are in the AFT's scope such that a manual search in an RS for ambiguities outside the AFT's scope is significantly easier than a manual search of the RS for all ambiguities? [Principal Ideas/Results] This paper presents the design of a prototype AFT, SREE (Systemized Requirements Engineering Environment), whose goal is achieving a 100% recall rate for the ambiguities in its scope, even at the cost of a precision rate of less than 100%. The ambiguities that SREE searches for by lexical analysis are the ones whose keyword indicators are found in SREE's ambiguity-indicator corpus that was constructed based on studies of several industrial strength RSs. SREE was run on two of these industrial strength RSs, and the time to do a completely manual search of these RSs is compared to the time to reject the false positives in SREE's output plus the time to do a manual search of these RSs for only ambiguities not in SREE's scope. [Contribution] SREE does not achieve its goals. However, the time comparison shows that the approach to divide ambiguity finding between an AFT with 100% recall for some types of ambiguity and a manual search for only the other types of ambiguity is promising enough to justify more work to improve the implementation of the approach. Some specific improvement suggestions are offered.
机译:[上下文和动机]许多用于查找自然语言(NL)要求规范(RSS)的含糊不清的工具基于解析器和语音标识符,这在真实的NL文本上是固有的不完美。因此,任何此类工具固有地具有小于100%的召回。因此,在NL RS上运行这种工具对于高度关键的系统,不会消除对RS中的完整手动搜索的必要性。 [问题/问题]可以建立含糊不清的查找工具(AFT),其中100%召回在AFT范围内的歧义类型,使得在AFT范围之外的含糊不清的rs中的手动搜索显着容易手动搜索所有歧义的卢比? [主要思想/结果]本文介绍了原型AFT,SREE(系统化需求工程环境)的设计,其目标是实现其范围内的歧义的100%召回率,即使以较低的精确率的成本超过100%。 SREE通过词法分析搜索的含糊不点是在SREE的歧义指标语料库中找到的那些关键字指标,该语料库是根据几个工业强度RSS的研究构建的。 Sree在这些工业强度RS中的两个人运行,并且在拒绝SREE输出中拒绝误报的时间进行了完全手动搜索这些RS的时间加上这些RS的时间仅用于歧义的时间不在Sree的范围内。 [贡献] Sree没有实现目标。然而,时间比较表明,除了用于某些类型的歧义和手动搜索的AFT之间的歧视方法的方法,以及仅对其他类型的歧义进行了足够的方法,以证明更多的工作来改善方法的实施方式。提供了一些具体的改进建议。

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