接受和使用数字技术应对COVID-19的改进UTAUT模型

Boluwaji A. Akinnuwesi , Faith-Michael E. Uzoka , Stephen G. Fashoto , Elliot Mbunge , Adedoyin Odumabo , Oluwaseun O. Amusa , Moses Okpeku , Olumide Owolabi
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引用次数: 26

摘要

COVID-19大流行加速了数字技术的发展,以应对病毒的传播。已经部署了若干数字干预措施,以减少大流行病的灾难性影响并执行预防措施。然而,受影响的民众采用和利用这些技术一直是一项艰巨的任务。因此,本研究采用UTAUT(接受与使用技术统一理论)框架,对影响人们接受COVID-19数字应对技术(CDTT)的行为意愿(BI)因素进行了探索性调查。本研究采用主成分分析和多元回归分析进行假设检验。研究发现,绩效期望(PE)、促进条件(FC)和社会影响(SI)是人们接受CDTT的BI的最佳预测因子。此外,组织影响与利益(OIB)和政府期望与利益(GEB)影响人们的商业智能。然而,年龄、性别和自愿使用CDTT等变量对BI没有显著影响,因为CDTT仍处于初期阶段,不易获得。结果表明,决策者和监管者应考虑PE、FC、SI、OIB和GEB等激励变量,以激励CDTT的接受和使用。此外,必须使民众了解在所有社区可获得和使用CDTT。此外,CDTT接受和使用的路径图和假设检验结果将有助于政府和民间组织规划和应对COVID-19防护措施的数字化,从而修改COVID-19健康防护法规。
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A modified UTAUT model for the acceptance and use of digital technology for tackling COVID-19

COVID-19 pandemic expedites the development of digital technologies to tackle the spread of the virus. Several digital interventions have been deployed to reduce the catastrophic impact of the pandemic and observe preventive measures. However, the adoption and utilization of these technologies by the affected populace has been a daunting task. Therefore, this study carried out exploratory investigation of the factors influencing the behavioural intention (BI) of people to accept COVID-19 digital tackling technologies (CDTT) using the UTAUT (Unified Theory of Acceptance and Use of Technology) framework. The study applied principal components analysis and multiple regression analysis for hypotheses testing. The study revealed that performance expectancy (PE), facilitating conditions (FC) and social influence (SI) are the best predictors of people's BI to accept CDTT. Also, organizational

influence and benefit (OIB) and government expectancy and benefits (GEB) influence the people's BI. However, variables such as age, gender and voluntariness to use CDTT have no significance to influence BI because the CDTT is still nascent and not easily accessible. The results show that the decision-makers and regulators should consider inciting variables such as PE, FC, SI, OIB and GEB, that motivate the acceptance and use of CDTT. Furthermore, the populace must be sensitized to the availability and use of CDTT in all communities. Also, the path diagram and hypothesis testing results for CDTT acceptance and use, will help government and private organizations in planning and responding to the digitalization of COVID-19 protective measures and hence revise the COVID-19 health protection regulation.

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