Mining user reviews of COVID contact-tracing apps: An exploratory analysis of nine European apps
More than 78 countries have developed COVID contact-tracing apps to limit the spread of coronavirus. However, many experts and scientists cast doubt on the effectiveness of those apps. For each app, a large number of reviews have been entered by end-users in app stores. Our goal is to gain insights...
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| Published in: | The Journal of systems and software Vol. 184; p. 111136 |
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| Main Authors: | , , |
| Format: | Journal Article |
| Language: | English |
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Elsevier Inc
01.02.2022
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| ISSN: | 0164-1212, 1873-1228, 1873-1228 |
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| Abstract | More than 78 countries have developed COVID contact-tracing apps to limit the spread of coronavirus. However, many experts and scientists cast doubt on the effectiveness of those apps. For each app, a large number of reviews have been entered by end-users in app stores.
Our goal is to gain insights into the user reviews of those apps, and to find out the main problems that users have reported. Our focus is to assess the “software in society” aspects of the apps, based on user reviews.
We selected nine European national apps for our analysis and used a commercial app-review analytics tool to extract and mine the user reviews. For all the apps combined, our dataset includes 39,425 user reviews.
Results show that users are generally dissatisfied with the nine apps under study, except the Scottish (“Protect Scotland”) app. Some of the major issues that users have complained about are high battery drainage and doubts on whether apps are really working.
Our results show that more work is needed by the stakeholders behind the apps (e.g., app developers, decision-makers, public health experts) to improve the public adoption, software quality and public perception of these apps.
•Users are generally dissatisfied with the nine apps under study.•Two major issues are high battery drainage and doubts on apps’ correct functionality.•A large number of cross-(mobile) device issues have been reported for the apps. |
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| AbstractList | More than 78 countries have developed COVID contact-tracing apps to limit the spread of coronavirus. However, many experts and scientists cast doubt on the effectiveness of those apps. For each app, a large number of reviews have been entered by end-users in app stores.CONTEXTMore than 78 countries have developed COVID contact-tracing apps to limit the spread of coronavirus. However, many experts and scientists cast doubt on the effectiveness of those apps. For each app, a large number of reviews have been entered by end-users in app stores.Our goal is to gain insights into the user reviews of those apps, and to find out the main problems that users have reported. Our focus is to assess the "software in society" aspects of the apps, based on user reviews.OBJECTIVEOur goal is to gain insights into the user reviews of those apps, and to find out the main problems that users have reported. Our focus is to assess the "software in society" aspects of the apps, based on user reviews.We selected nine European national apps for our analysis and used a commercial app-review analytics tool to extract and mine the user reviews. For all the apps combined, our dataset includes 39,425 user reviews.METHODWe selected nine European national apps for our analysis and used a commercial app-review analytics tool to extract and mine the user reviews. For all the apps combined, our dataset includes 39,425 user reviews.Results show that users are generally dissatisfied with the nine apps under study, except the Scottish ("Protect Scotland") app. Some of the major issues that users have complained about are high battery drainage and doubts on whether apps are really working.RESULTSResults show that users are generally dissatisfied with the nine apps under study, except the Scottish ("Protect Scotland") app. Some of the major issues that users have complained about are high battery drainage and doubts on whether apps are really working.Our results show that more work is needed by the stakeholders behind the apps (e.g., app developers, decision-makers, public health experts) to improve the public adoption, software quality and public perception of these apps.CONCLUSIONOur results show that more work is needed by the stakeholders behind the apps (e.g., app developers, decision-makers, public health experts) to improve the public adoption, software quality and public perception of these apps. More than 78 countries have developed COVID contact-tracing apps to limit the spread of coronavirus. However, many experts and scientists cast doubt on the effectiveness of those apps. For each app, a large number of reviews have been entered by end-users in app stores. Our goal is to gain insights into the user reviews of those apps, and to find out the main problems that users have reported. Our focus is to assess the "software in society" aspects of the apps, based on user reviews. We selected nine European national apps for our analysis and used a commercial app-review analytics tool to extract and mine the user reviews. For all the apps combined, our dataset includes 39,425 user reviews. Results show that users are generally dissatisfied with the nine apps under study, except the Scottish ("Protect Scotland") app. Some of the major issues that users have complained about are high battery drainage and doubts on whether apps are really working. Our results show that more work is needed by the stakeholders behind the apps (e.g., app developers, decision-makers, public health experts) to improve the public adoption, software quality and public perception of these apps. Context: More than 78 countries have developed COVID contact-tracing apps to limit the spread of coronavirus. However, many experts and scientists cast doubt on the effectiveness of those apps. For each app, a large number of reviews have been entered by end-users in app stores. Objective: Our goal is to gain insights into the user reviews of those apps, and to find out the main problems that users have reported. Our focus is to assess the “software in society” aspects of the apps, based on user reviews. Method: We selected nine European national apps for our analysis and used a commercial app-review analytics tool to extract and mine the user reviews. For all the apps combined, our dataset includes 39,425 user reviews. Results: Results show that users are generally dissatisfied with the nine apps under study, except the Scottish (“Protect Scotland”) app. Some of the major issues that users have complained about are high battery drainage and doubts on whether apps are really working. Conclusion: Our results show that more work is needed by the stakeholders behind the apps (e.g., app developers, decision-makers, public health experts) to improve the public adoption, software quality and public perception of these apps. © 2021 Elsevier Inc. More than 78 countries have developed COVID contact-tracing apps to limit the spread of coronavirus. However, many experts and scientists cast doubt on the effectiveness of those apps. For each app, a large number of reviews have been entered by end-users in app stores. Our goal is to gain insights into the user reviews of those apps, and to find out the main problems that users have reported. Our focus is to assess the “software in society” aspects of the apps, based on user reviews. We selected nine European national apps for our analysis and used a commercial app-review analytics tool to extract and mine the user reviews. For all the apps combined, our dataset includes 39,425 user reviews. Results show that users are generally dissatisfied with the nine apps under study, except the Scottish (“Protect Scotland”) app. Some of the major issues that users have complained about are high battery drainage and doubts on whether apps are really working. Our results show that more work is needed by the stakeholders behind the apps (e.g., app developers, decision-makers, public health experts) to improve the public adoption, software quality and public perception of these apps. •Users are generally dissatisfied with the nine apps under study.•Two major issues are high battery drainage and doubts on apps’ correct functionality.•A large number of cross-(mobile) device issues have been reported for the apps. |
| ArticleNumber | 111136 |
| Author | Felderer, Michael Garousi, Vahid Cutting, David |
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| Cites_doi | 10.1145/3084226.3084241 10.1016/S2215-0366(16)30005-0 10.9745/GHSP-D-15-00207 10.1007/s10664-008-9102-8 10.1038/sj.bdj.2015.585 10.3390/s120911734 10.1109/MS.2019.2949322 10.1093/shm/9.2.195 10.1007/978-3-030-63086-7_4 10.1007/s10664-018-9617-6 10.2196/19857 10.1109/SEmotion.2017.6 10.1109/RE.2014.6912257 10.1016/j.jss.2016.11.027 10.1109/TSE.2014.2360674 10.1109/ESEM.2013.9 10.1007/978-3-030-63086-7_17 10.1145/2992154.2992177 10.1186/s12879-019-4354-z 10.1109/MSR.2013.6624001 10.2196/20572 10.1109/ACCESS.2020.3010226 10.1109/MS.2014.50 10.2196/mhealth.3422 10.1007/s10664-019-09716-7 10.1145/1143844.1143967 10.3233/AO-150150 10.1007/978-3-642-01680-6_12 10.1155/2020/8851429 10.1145/2774225.2775075 10.2196/19457 10.1016/j.jtbi.2015.08.004 |
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| Keywords | COVID User reviews Mobile apps Contact-tracing Software in society Data mining Software engineering |
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| Snippet | More than 78 countries have developed COVID contact-tracing apps to limit the spread of coronavirus. However, many experts and scientists cast doubt on the... Context: More than 78 countries have developed COVID contact-tracing apps to limit the spread of coronavirus. However, many experts and scientists cast doubt... |
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| SubjectTerms | App stores Application programs Computer software selection and evaluation Contact tracing Coronaviruses COVID Data mining Decision making End-users Exploratory analysis Gain insight In Practice Mobile app Mobile apps Software engineering Software in society User reviews |
| Title | Mining user reviews of COVID contact-tracing apps: An exploratory analysis of nine European apps |
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