在开发人员-客户端对话中检测用户故事信息以生成提取摘要

Paige Rodeghero, Siyuan Jiang, A. Armaly, Collin McMillan
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引用次数: 58

摘要

用户故事是对软件用户需要的功能的描述。它们在确定应该处理哪些软件需求和错误修复以及以何种顺序处理方面发挥着重要作用。开发人员通过与客户的会议引出用户故事。但是,用户故事的引出是复杂的,并且涉及许多步骤来适应不断变化和不明确的客户需求。结果是,开发人员必须在会议期间做详细的笔记,否则可能会错过重要的信息。理想情况下,开发人员将不再需要自己做笔记,而是自然地与客户交谈。这篇论文是朝着这个理想迈出的一步。我们提出了一种技术,用于从客户和开发人员之间记录的对话中自动提取与用户故事相关的信息。我们进行了定性研究,以证明用户故事信息在这些对话中以足够的数量存在,可以自动提取。由此,我们发现大约10.2%的对话包含用户故事信息。然后,我们在定量研究中测试我们的技术,以确定我们的技术可以提取用户故事信息的程度。在我们的实验中,我们的过程获得了70.8%的准确率和18.3%的召回率。
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Detecting User Story Information in Developer-Client Conversations to Generate Extractive Summaries
User stories are descriptions of functionality that a software user needs. They play an important role in determining which software requirements and bug fixes should be handled and in what order. Developers elicit user stories through meetings with customers. But user story elicitation is complex, and involves many passes to accommodate shifting and unclear customer needs. The result is that developers must take detailed notes during meetings or risk missing important information. Ideally, developers would be freed of the need to take notes themselves, and instead speak naturally with their customers. This paper is a step towards that ideal. We present a technique for automatically extracting information relevant to user stories from recorded conversations between customers and developers. We perform a qualitative study to demonstrate that user story information exists in these conversations in a sufficient quantity to extract automatically. From this, we found that roughly 10.2% of these conversations contained user story information. Then, we test our technique in a quantitative study to determine the degree to which our technique can extract user story information. In our experiment, our process obtained about 70.8% precision and 18.3% recall on the information.
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