Text mining in supporting software systems risk assurance

LiGuo Huang, D. Port, Liang Wang, Tao Xie, T. Menzies
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引用次数: 19

Abstract

Insufficient risk analysis often leads to software system design defects and system failures. Assurance of software risk documents aims to increase the confidence that identified risks are complete, specific, and correct. Yet assurance methods rely heavily on manual analysis that requires significant knowledge of historical projects and subjective, perhaps biased judgment from domain experts. To address the issue, we have developed RARGen, a text mining-based approach based on well-established methods aiming to automatically create and maintain risk repositories to identify usable risk association rules (RARs) from a corpus of risk analysis documents. RARs are risks that have frequently occurred in historical projects. We evaluate RARGen on 20 publicly available e-service projects. Our evaluation results show that RARGen can effectively reason about RARs, increase confidence and cost-effectiveness of risk assurance, and support difficult-to-perform activities such as assuring complete-risk identification.
文本挖掘在支持软件系统风险保证中的应用
不充分的风险分析往往导致软件系统设计缺陷和系统故障。软件风险文档的保证旨在增加确定的风险是完整的、具体的和正确的信心。然而,保证方法在很大程度上依赖于人工分析,这需要大量的历史项目知识和来自领域专家的主观的、可能有偏见的判断。为了解决这个问题,我们开发了RARGen,这是一种基于文本挖掘的方法,它基于已建立的方法,旨在自动创建和维护风险存储库,以从风险分析文档的语料库中识别可用的风险关联规则(RARs)。rar是在历史项目中经常发生的风险。我们在20个公开的电子服务项目上评估了RARGen。我们的评估结果表明,RARGen可以有效地推断rar,增加风险保证的信心和成本效益,并支持难以执行的活动,如确保完全风险识别。
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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