首页> 外文期刊>Cyberpsychology, behavior and social networking >Ready or Not for Contact Tracing? Investigating the Adoption Intention of COVID-19 Contact-Tracing Technology Using an Extended Unified Theory of Acceptance and Use of Technology Model
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Ready or Not for Contact Tracing? Investigating the Adoption Intention of COVID-19 Contact-Tracing Technology Using an Extended Unified Theory of Acceptance and Use of Technology Model

机译:准备或不用于联系跟踪? 使用技术模型的延长统一理论研究Covid-19接触技术的采用意图

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To diminish the risk of spreading COVID-19 as society exits the lockdowns, several apps have been developed for contact tracing. These apps register which users have been in proximity of each other. If a user is diagnosed with COVID-19, app users who have been recently in proximity to this person are notified. The effectiveness of these apps highly depends on public support. Therefore, this study investigated the factors that influence app use intention, based on an extended unified theory of acceptance and use of technology model. A survey was administered in Belgium (Flanders) to 1,500 participants aged 18 to 64 years old. Structural equation modeling was used to test the relationships among the model's constructs. Our results indicated that 48.70 percent of the respondents wanted to use the app. The model explained 39 percent of the variance in app use intention. The most important predictor was performance expectancy, followed by facilitating conditions and social influence. Effort expectancy was not related to intention. Moreover, individuals' innovativeness was positively related with app use intention, whereas app-related privacy concerns negatively influenced intention. Based on the results, suggestions are made for policy makers and developers.
机译:为了减少扩散Covid-19作为社会退出锁定的风险,已经开发了几种应用程序用于接触跟踪。这些应用程序注册哪些用户彼此附近。如果用户被诊断为CoVID-19,则通知最近靠近此人的应用用户。这些应用程序的有效性高度取决于公共支持。因此,本研究调查了影响应用程序使用意图的因素,基于扩展统一的接受和使用技术模型。在比利时(佛兰德斯)管理一项调查,18至64岁的1,500名参与者。结构方程建模用于测试模型结构中的关系。我们的结果表明,48.70%的受访者希望使用该应用程序。该模型解释了应用程序使用意图的39%的差异。最重要的预测因素是性能期望,随后促进条件和社会影响力。努力预期与意图无关。此外,个人的创新与应用程序使用意图呈正相关,而应用相关的隐私则涉及产生负面影响的意图。根据结果​​,为政策制定者和开发人员提出建议。

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