School of Industrial Engineering and Engineering Management, Mapúa University, 658 Muralla St., Intramuros, Manila 1002, Philippines.
Department of Industrial Engineering and Management, Yuan Ze University, 135 Yuan-Tung Road, Chung-Li 32003, Taiwan.
Int J Environ Res Public Health. 2022 Jun 29;19(13):7979. doi: 10.3390/ijerph19137979.
With the constant mutation of COVID-19 variants, the need to reduce the spread should be explored. MorChana is a mobile application utilized in Thailand to help mitigate the spread of the virus. This study aimed to explore factors affecting the actual use (AU) of the application through the use of machine learning algorithms (MLA) such as Random Forest Classifier (RFC) and Artificial Neural Network (ANN). An integrated Protection Motivation Theory (PMT) and the Unified Theory of Acceptance and Use of Technology (UTAUT) were considered. Using convenience sampling, a total of 907 valid responses from those who answered the online survey were voluntarily gathered. With 93.00% and 98.12% accuracy from RFC and ANN, it was seen that hedonic motivation and facilitating conditions were seen to be factors affecting very high AU; while habit and understanding led to high AU. It was seen that when people understand the impact and causes of the COVID-19 pandemic's aftermath, its severity, and also see a way to reduce it, it would lead to the actual usage of a system. The findings of this study could be used by developers, the government, and stakeholders to capitalize on using the health-related applications with the intention of increasing actual usage. The framework and methodology used presented a way to evaluate health-related technologies. Moreover, the developing trends of using MLA for evaluating human behavior-related studies were further justified in this study. It is suggested that MLA could be utilized to assess factors affecting human behavior and technology used worldwide.
随着 COVID-19 变种的不断变异,探索减少传播的方法是必要的。MorChana 是泰国使用的一款移动应用程序,旨在帮助减轻病毒的传播。本研究旨在通过使用机器学习算法(如随机森林分类器(RFC)和人工神经网络(ANN))探索影响该应用程序实际使用(AU)的因素。该研究综合考虑了保护动机理论(PMT)和技术接受统一理论(UTAUT)。使用便利抽样,共从回答在线调查的人群中收集了 907 份有效回复。RFC 和 ANN 的准确率分别为 93.00%和 98.12%,表明享乐动机和便利条件是影响非常高 AU 的因素;而习惯和理解则导致高 AU。研究表明,当人们了解 COVID-19 大流行后果的影响和原因、其严重程度,并且看到减少其影响的方法时,他们就会实际使用该系统。本研究的结果可被开发者、政府和利益相关者用来利用与健康相关的应用程序,以增加实际使用。本研究提出的框架和方法为评估健康相关技术提供了一种途径。此外,本研究还进一步证明了使用 MLA 评估与人的行为相关的研究的发展趋势。建议在全球范围内使用 MLA 评估影响人类行为和技术使用的因素。