Exploring User Acceptance Determinants of COVID-19-Tracing Apps to Manage the Pandemic

Nicolai Krüger, Alina Behne, J. Beinke, Agnis Stibe, Frank Teuteberg
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引用次数: 8

Abstract

Tracing infectious individuals and clusters is a major tactic for mitigating the pandemic. This paper explores the factors impacting the intentions and actual use of COVID-19 contact tracing apps based on a technology acceptance model. A partial least squares structural equation model has been applied to understand determinants for the usage of tracing apps based on a large sample (N = 2,398) from more than 30 countries (mainly from Germany and USA). Further, the paper presents a classification of COVID-19 apps and users. Through that, the study provides insights for technologists and designers of tracing apps as well as policy makers and practitioners to work toward enhancing user acceptance. Moreover, the results are abstracted to general social participation with apps in order to manage future strategies. The theoretical contribution of this work includes the results of our acceptance model and a classification of COVID-19 tracing and tracking apps.
探索covid -19追踪应用程序管理大流行的用户接受度决定因素
追踪感染个体和聚集性感染是缓解大流行的一项主要策略。本文基于技术接受模型,探讨影响新型冠状病毒接触者追踪应用意向和实际使用的因素。基于来自30多个国家(主要来自德国和美国)的大样本(N = 2398),应用偏最小二乘结构方程模型来理解使用追踪应用程序的决定因素。此外,本文还对COVID-19应用程序和用户进行了分类。通过这项研究,该研究为追踪应用程序的技术专家和设计师以及政策制定者和从业者提供了见解,以提高用户的接受度。此外,结果被抽象为应用程序的一般社会参与,以便管理未来的策略。这项工作的理论贡献包括我们的接受模型的结果和COVID-19追踪和跟踪应用程序的分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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