Panning requirement nuggets in stream of software maintenance tickets

Senthil Mani, K. Sankaranarayanan, Vibha Sinha, Premkumar T. Devanbu
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引用次数: 13

Abstract

There is an increasing trend to outsource maintenance of large applications and application portfolios of a business to third parties, specialising in application maintenance, who are incented to deliver the best possible maintenance at the lowest cost. To do so, they need to identify repeat problem areas, which cause more maintenance grief, and seek a unified remedy to avoid the costs spent on fixing these individually. These repeat areas, in a sense, represent major, evolving areas of need, or requirements, for the customer. The information about the repeating problem is typically embedded in the unstructured text of multiple tickets, waiting to be found and addressed. Currently, repeat problems are found by manual analysis; effective solutions depend on the collective experience of the team solving them. In this paper, we propose an approach to automatically analyze problem tickets to discover groups of problems being reported in them and provide meaningful, descriptive labels to help interpret these groups. Our approach incorporates a cleansing phase to handle the high level of noise observed in problem tickets and a method to incorporate multiple text clustering techniques and merge their results in a meaningful manner. We provide detailed experiments to quantitatively and qualitatively evaluate our approach
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在软件维护单流中筛选需求块
越来越多的趋势是将大型应用程序和业务应用程序组合的维护外包给专门从事应用程序维护的第三方,这些第三方被鼓励以最低的成本提供尽可能好的维护。要做到这一点,他们需要识别重复的问题区域,这些区域会导致更多的维护问题,并寻求统一的补救措施,以避免单独修复这些问题所花费的成本。从某种意义上说,这些重复的领域代表了客户需要或需求的主要的、不断发展的领域。关于重复问题的信息通常嵌入在多个票据的非结构化文本中,等待被发现和处理。目前,重复问题主要通过人工分析发现;有效的解决方案依赖于解决这些问题的团队的集体经验。在本文中,我们提出了一种自动分析问题单的方法,以发现其中报告的问题组,并提供有意义的描述性标签来帮助解释这些组。我们的方法包含了一个清理阶段来处理在问题单中观察到的高水平噪声,以及一个结合多种文本聚类技术并以有意义的方式合并其结果的方法。我们提供详细的实验来定量和定性地评估我们的方法
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