User Story Extraction from Online News with FeatureBased and Maximum Entropy Method for Software Requirements Elicitation

Nafingatun Ngaliah, D. Siahaan, I. K. Raharjana
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引用次数: 1

Abstract

Software requirements query is the first stage in software requirements engineering. Elicitation is the process of identifying software requirements from various sources such as interviews with resource persons, questionnaires, document analysis, etc. The user story is easy to adapt according to changing system requirements. The user story is a semi-structured language because the compilation of user stories must follow the syntax as a standard for writing features in agile software development methods. In addition, user story also easily understood by end-users who do not have an information technology background because they contain descriptions of system requirements in natural language. In making user stories, there are three aspects, namely the who aspect (actor), what aspect (activity), and the why aspect (reason). This study proposes the extraction of user stories consisting of who and what aspects of online news sites using feature extraction and maximum entropy as a classification method. The systems analyst can use the actual information related to the lessons obtained in the online news to get the required software requirements. The expected result of the extraction method in this research is to produce user stories relevant to the software requirements to assist systems analysts in generating requirements. This proposed method shows that the average precision and recall are 98.21% and 95.16% for the who aspect; 87,14% and 87,50% for what aspects; 81.21% and 78.60% for user stories. Thus, this result suggests that the proposed method generates user stories relevant to functional software.
基于特征和最大熵方法的在线新闻用户故事提取
软件需求查询是软件需求工程的第一阶段。启发是从各种来源识别软件需求的过程,例如与资源人员的访谈、问卷调查、文档分析等。用户描述很容易根据不断变化的系统需求进行调整。用户故事是一种半结构化语言,因为用户故事的编译必须遵循敏捷软件开发方法中编写特性的标准语法。此外,用户故事也很容易被没有信息技术背景的最终用户理解,因为它们用自然语言包含了对系统需求的描述。在制作用户故事时,有三个方面,即谁方面(参与者),什么方面(活动)和为什么方面(原因)。本研究提出使用特征提取和最大熵作为分类方法,提取由在线新闻网站的谁和什么方面组成的用户故事。系统分析人员可以使用与在线新闻中获得的课程相关的实际信息来获得所需的软件需求。本研究中提取方法的预期结果是产生与软件需求相关的用户故事,以帮助系统分析人员生成需求。该方法在who方面的平均准确率和召回率分别为98.21%和95.16%;87,14%和87,50%用于哪些方面;81.21%和78.60%的用户故事。因此,这个结果表明所提出的方法生成与功能软件相关的用户故事。
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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