Machine learning for mHealth apps quality evaluation: An approach based on user feedback analysis.

IF 1.7 3区 计算机科学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Mariem Haoues, Raouia Mokni, Asma Sellami
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引用次数: 0

Abstract

Mobile apps for healthcare (mHealth apps for short) have been increasingly adapted to help users manage their health or to get healthcare services. User feedback analysis is a pertinent method that can be used to improve the quality of mHealth apps. The objective of this paper is to use supervised machine learning algorithms to evaluate the quality of mHealth apps according to the ISO/IEC 25010 quality model based on user feedback. For this purpose, a total of 1682 user reviews have been collected from 86 mHealth apps provided by Google Play Store. Those reviews have been classified initially into the ISO/IEC 25010 eight quality characteristics, and further into Negative, Positive, and Neutral opinions. This analysis has been performed using machine learning and natural language processing techniques. The best performances were provided by the Stochastic Gradient Descent (SGD) classifier with an accuracy of 82.00% in classifying user reviews according to the ISO/IEC 25010 quality characteristics. Moreover, Support Vector Machine (SVM) classified the collected user reviews into Negative, Positive, and Neutral with an accuracy of 90.50%. Finally, for each quality characteristic, we classified the collected reviews according to the sentiment polarity. The best performance results were obtained for the Usability, Security, and Compatibility quality characteristics using SGD classifier with an accuracy equal to 98.00%, 97.50%, and 96.00%, respectively. The results of this paper will be effective to assist developers in improving the quality of mHealth apps.

Abstract Image

移动健康应用质量评估的机器学习
用于医疗保健的移动应用程序(简称移动医疗应用程序)已被越来越多地用于帮助用户管理健康或获得医疗保健服务。用户反馈分析是一种可用于提高移动医疗应用程序质量的相关方法。本文的目的是根据 ISO/IEC 25010 质量模型,使用有监督的机器学习算法来评估基于用户反馈的移动医疗应用程序的质量。为此,我们从 Google Play 商店提供的 86 款移动医疗应用程序中收集了 1682 条用户评论。这些评论最初按照 ISO/IEC 25010 的八个质量特征进行分类,并进一步分为负面、正面和中性意见。这项分析是利用机器学习和自然语言处理技术进行的。在根据 ISO/IEC 25010 质量特征对用户评论进行分类方面,随机梯度下降(SGD)分类器的准确率高达 82.00%,表现最佳。此外,支持向量机(SVM)将收集到的用户评论分为 "负面"、"正面 "和 "中性",准确率为 90.50%。最后,对于每个质量特征,我们根据情感极性对收集到的评论进行分类。使用 SGD 分类器对可用性、安全性和兼容性质量特性进行分类的结果最佳,准确率分别为 98.00%、97.50% 和 96.00%。本文的结果将有效地帮助开发人员提高移动医疗应用程序的质量。
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来源期刊
Software Quality Journal
Software Quality Journal 工程技术-计算机:软件工程
CiteScore
4.90
自引率
5.30%
发文量
26
审稿时长
>12 weeks
期刊介绍: The aims of the Software Quality Journal are: (1) To promote awareness of the crucial role of quality management in the effective construction of the software systems developed, used, and/or maintained by organizations in pursuit of their business objectives. (2) To provide a forum of the exchange of experiences and information on software quality management and the methods, tools and products used to measure and achieve it. (3) To provide a vehicle for the publication of academic papers related to all aspects of software quality. The Journal addresses all aspects of software quality from both a practical and an academic viewpoint. It invites contributions from practitioners and academics, as well as national and international policy and standard making bodies, and sets out to be the definitive international reference source for such information. The Journal will accept research, technique, case study, survey and tutorial submissions that address quality-related issues including, but not limited to: internal and external quality standards, management of quality within organizations, technical aspects of quality, quality aspects for product vendors, software measurement and metrics, software testing and other quality assurance techniques, total quality management and cultural aspects. Other technical issues with regard to software quality, including: data management, formal methods, safety critical applications, and CASE.
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