Kornpitack Piriyakorn, Sawmong Sudaporn
KMITL Business School (KBS), King Mongkut's Institute of Technology Ladkrabang (KMITL), Bangkok, Thailand.
Heliyon. 2022 Mar;8(3):e09183. doi: 10.1016/j.heliyon.2022.e09183. Epub 2022 Mar 24.
Starting in early 2020, Thailand's education system came to a grinding halt due to the global COVID-19 pandemic, which created a fervor-like effort to move from traditional classrooms to online education. However, the process has experienced significant troubles. Therefore, starting in June 2021, multiple-stage random sampling and simple random sampling were used to select a sample of 270 Thai high school students across nine Thai provinces. Using a network of Thai teachers, students were assisted with their questionnaire input using Google Form. LISREL 9.1 software was used to conduct the subsequent goodness-of-fit (GOF) assessment and the confirmatory factor analysis (CFA). A structural equation model (SEM) was used for the 53-item questionnaire, which contained eight latent variables, 18 observed variables, and ten hypotheses. Descriptive statistics were used to analyze the SEM's output and ten hypotheses. After that, it was calculated that the model's causal variables had a positive effect on SS, which had an R of 54%. The analysis also revealed that when ranked by total effect (TE) values, (PE = 0.43) was most significant, followed by (AU = 0.30), (LI = 0.18), and (BI = 0.12). Overall, hypotheses testing established three moderately strong correlations, four weak correlations, and three unsupported hypotheses. The novelty of our study is the growing concern of stakeholders for how online learning affects student satisfaction due to the deadly global COVID-19 pandemic. This study's research contribution is that it is unique in that it was conducted during the pandemic lockdown while students were participating in Thai Ministry of Education (MOE) online courses. This paper contributes to the online education domain by providing research directions and implications for future researchers. In conclusion, the study confirmed that the model adequately explained causal relationships between variables and presented direct and indirect significant impacts on online SS, promoting learners' better academic performance and knowledge acquisition.
从2020年初开始,由于全球新冠疫情,泰国的教育系统陷入停滞,这引发了一场从传统课堂转向在线教育的热潮。然而,这一过程遭遇了重大问题。因此,从2021年6月开始,采用多阶段随机抽样和简单随机抽样的方法,从泰国九个省份选取了270名高中生作为样本。借助泰国教师网络,通过谷歌表单帮助学生输入问卷。使用LISREL 9.1软件进行后续的拟合优度(GOF)评估和验证性因素分析(CFA)。对一份包含八个潜在变量、18个观测变量和十个假设的53项问卷,使用结构方程模型(SEM)进行分析。运用描述性统计分析SEM的输出结果和十个假设。之后计算得出,该模型的因果变量对学生满意度(SS)有积极影响,决定系数R为54%。分析还显示,按总效应(TE)值排序时,(PE = 0.43)最为显著,其次是(AU = 0.30)、(LI = 0.18)和(BI = 0.12)。总体而言,假设检验确定了三个中度强相关、四个弱相关和三个未得到支持的假设。我们研究的新颖之处在于,由于致命的全球新冠疫情,利益相关者日益关注在线学习如何影响学生满意度。本研究的研究贡献在于其独特性,它是在疫情封锁期间学生参与泰国教育部在线课程时进行的。本文通过为未来研究人员提供研究方向和启示,为在线教育领域做出了贡献。总之,该研究证实该模型充分解释了变量之间的因果关系,并对在线学生满意度产生了直接和间接的显著影响,促进了学习者更好的学业表现和知识获取。