基于Android应用市场应用评审的非功能需求分析

Yongming Yao, Weiyi Jiang, Yulin Wang, Peng Song, Bin Wang
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引用次数: 1

摘要

Android市场上有超过300万个移动应用程序。每一个移动应用程序的开发过程都是严谨的,衍生出许多类型的应用程序质量需求研究,这些研究与应用程序的开发高度相关。研究表明,移动应用程序的用户评论是一个未使用的大型数据库,可以提供用户需求的反馈。在本文中,用户评论被自动划分为非功能需求(nfr)和其他类型。本文提出了一种循环匹配分类技术(loop matching classification)。采用LMC、BOW和TF-IDF三种分类技术对用户评论进行分类,并对三种分类技术结果的正确率、召回率和F-measure进行比较。结果表明,LMC分类技术的准确率为74.2%,召回率为82.5%,f值为78.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-Functional Requirements Analysis Based on Application Reviews in the Android App Market
There are more than 3 million mobile apps in the Android market. The development process of every mobile application is rigorous, and many types of research on application quality requirements are derived, which are highly related to the development of applications. Research shows that user reviews of mobile applications are an unused large database that can provide feedback on user needs. In this article, user comments are automatically classified into non-functional requirements (NFRs) and other types. This paper proposes a loop matching classification technique (Loop Matching Classification). The three classification techniques of LMC, BOW, and TF-IDF were used to classify user comments, and the accuracy, recall rate, and F-measure of the results of the three classification techniques were compared. It was found that the Precision value of the LMC classification technique was 74.2%, the Recall was 82.5% and the F-measure was 78.1%.
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