运用层次分析法识别基于社交媒体的体育活动持续意愿的预测因素

Nittee Wanichavorapong, Ab Razak Che Hussin, Ahmad Fadhil Yusof
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引用次数: 0

摘要

世界人口正受到以心血管疾病、肥胖等健康问题为形式的大量缺乏身体活动的威胁。体育活动(PA),如散步,骑自行车,打扫房子和洗车可以改善健康的身心。社交媒体(SM)是一种不断发展的社交网络工具,将来自全球不同国家的人们联系在一起。此外,SM有很大的潜力来提高PA水平,从荟萃分析中,他们展示了改变行为和许多久坐不动的生活方式的可能性,例如看电视,玩游戏,使用电脑可以减少SM的帮助。因此,维持个人助理的行为可能会变成一个复杂的话题,因为人们需要持续的动机。成功预测和理解持续意图(CI)的好处将使我们清楚地了解什么是重要因素。本研究的目的是通过分析前人的工作和现有的理论理论,建立一个预测和理解Facebook (FB)用户对PA的CI是如何发展的模型。本文采用的建模方法有Wordcloud、层次分析法(AHP)、认知理论综述以及基础模型的综合。CI模型由同样的计划行为(TPB)构念如态度、意图、感知行为控制(PBC)和感知价值(PV)组成,附加构念和技术接受模型(TAM)构念如感知有用性(PU)和易用性(PEOU)。然而,CI模型还需要社会网络因素的延伸,因此,纳入社会网络结构和网络联系特征来衡量社会影响力的影响,以替代主观规范。这些发现对于理解基于sm的PA上驱动CI的机制至关重要,并且适用于流行病学、公共卫生等领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying predictors of continuance intention on social media-based physical activity using the analytic hierarchy process method
The world population is being threatened by immense rates of physical inactivity in the form of health issues such as cardio diseases, obesity, and etc. Physical activity (PA) such as walking, cycling, cleaning houses and washing cars can improve healthy mind and body. Social media (SM) is a growing social-networking tool connecting people from different states across the globe. Plus, SM has great potential to increase PA level from meta-analyses they exhibited the possibility of changing behavior and many sedentary lifestyles, for example watching TV, playing games, and working with computers can be reduced with the help of SM. Whereby, maintaining PA behavior can turn into a sophisticated topic as people would need constant motivations. The benefits of successfully predicting and understanding continuance intention (CI) will give us a clear picture of what the significant factors are. The objective of this study is to build a model that predicts and understands how Facebook (FB) users' CI for PA developed by analyzing the prior works and the existing theoretical theories. Modeling methods used in this work are Wordcloud, the analytic hierarchy process's calculation (AHP), the review of cognitive theories, and the synthesis of the base models. The CI model is comprised of the same theory of planned behavior's (TPB) constructs like attitude, intention, perceived behavioral control (PBC) with perceived value (PV), as the additional construct and technology acceptance model's (TAM) constructs like perceived usefulness (PU) and ease of use (PEOU). Nevertheless, the CI model also needs the extension of social network factors, therefore, social network structure and characteristics of network ties are included to measure the impact of social influence as a replacement of subjective norm. The findings are fundamental to understanding of the mechanisms driving CI on SM-based PA and applicable to domains like epidemiology, public health and so on.
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