Analysis of service strategies through changes in Messenger application reviews during the pandemic: focusing on topic modeling

Yun-ok Lee, Mijin Noh, Yangsok Kim, Mumoungcho Han
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Abstract

As face-to-face communication has become difficult due to the COVID-19 pandemic, studies have been conducted to understand the impact of non-face-to-face communication, but there is a lack of research that examines this through messenger application reviews. This study aims to identify the impact of the pandemic through Latent Dirichlet Allocation (LDA) topic modeling by collecting review data of 메신저 applications in the Google Play Store and suggest service strategies accordingly. The study categorized the data based on when the pandemic started and the ratings given by users. The analysis showed that messenger is mainly used by middle-aged and older people, and that family communication increased after the pandemic. Users expressed frustration with the application's updates and found it difficult to adapt to the changes. This calls for a development approach that adjusts the frequency of updates and actively listens to user feedback. Also, providing an intuitive and simple user interface (UI) is expected to improve user satisfaction.
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通过大流行期间Messenger应用程序审查中的变化分析服务策略:重点关注主题建模
由于新冠肺炎疫情,面对面的交流变得困难,虽然有人研究了非面对面交流的影响,但缺乏通过messenger应用程序审查来检验这一点的研究。本研究旨在通过收集Google Play Store中应用程序的评论数据,通过潜在狄利克莱分配(Latent Dirichlet Allocation, LDA)主题建模来识别大流行的影响,并提出相应的服务策略。该研究根据大流行开始的时间和用户给出的评分对数据进行了分类。分析显示,使用messenger的主要是中老年人,疫情后家庭通信增加。用户对应用程序的更新表示失望,并发现很难适应这些变化。这就需要一种调整更新频率并积极听取用户反馈的开发方法。此外,提供直观和简单的用户界面(UI)有望提高用户满意度。
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