应用程序评论分类的集成方法:一种软件进化方法(N)

Emitzá Guzmán, Muhammad El-Haliby, B. Bruegge
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引用次数: 125

摘要

应用程序市场是移动应用程序的分销平台,是用户和开发者之间的沟通渠道。这些平台允许用户对下载的应用撰写评论。最近的研究发现这样的评论包含了对软件发展有用的信息。然而,手工分析大量的用户评论是一项繁琐且耗时的任务。在这项工作中,我们提出了一种分类法,用于将应用程序评论分类为与软件进化相关的类别。此外,我们描述了一个实验,该实验调查了单个机器学习算法及其集成的性能,用于自动分类应用程序评论。我们评估了机器学习技术在4550条评论上的性能,这些评论使用内容分析方法进行了系统标记。总体而言,集合比单个分类器有更好的表现,平均精度为0.74,召回率为0.59。
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Ensemble Methods for App Review Classification: An Approach for Software Evolution (N)
App marketplaces are distribution platforms for mobile applications that serve as a communication channel between users and developers. These platforms allow users to write reviews about downloaded apps. Recent studies found that such reviews include information that is useful for software evolution. However, the manual analysis of a large amount of user reviews is a tedious and time consuming task. In this work we propose a taxonomy for classifying app reviews into categories relevant for software evolution. Additionally, we describe an experiment that investigates the performance of individual machine learning algorithms and its ensembles for automatically classifying the app reviews. We evaluated the performance of the machine learning techniques on 4550 reviews that were systematically labeled using content analysis methods. Overall, the ensembles had a better performance than the individual classifiers, with an average precision of 0.74 and 0.59 recall.
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