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影响研究生使用谷歌课堂行为意向的因素:案例研究——混合方法研究

Factors influencing graduate students' behavioral intention to use Google Classroom: Case study-mixed methods research.

作者信息

Alotumi Mohialdeen

机构信息

Department of English, Faculty of Languages, Sana'a University, P.O. Box 14317, Sana'a, Yemen.

Sana'a, Yemen.

出版信息

Educ Inf Technol (Dordr). 2022;27(7):10035-10063. doi: 10.1007/s10639-022-11051-2. Epub 2022 Apr 11.

DOI:10.1007/s10639-022-11051-2
PMID:35431601
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8995886/
Abstract

Blended learning combines face-to-face instruction and online learning experiences. It capitalizes on online learning management systems, one of which is Google Classroom (GC). Nevertheless, empirical investigations have mirrored literature gaps in understanding how the GC platform affects students' behavioral intention to harness it for web-based learning. Therefore, this case study applied a modified version of the extended unified theory of acceptance and use of technology (UTAUT2) as a theoretical underpinning to examine factors influencing graduate students' behavioral intention to utilize the GC platform. Employing mixed methods explanatory sequential design, the study first analyzed survey data from 23 EFL graduate students implementing partial least squares structural equation modeling (PLS-SEM). Subsequently, it conducted a qualitative stage carrying out semi-structured interviews for data collection and thematic analysis for its evaluation. The study through PLS-SEM results revealed that the most crucial determinant of students' behavioral intention toward the GC platform was habit, which hung on facilitating conditions and hedonic motivation. Besides, it evinced facilitating conditions as the most important performing interaction factor in determining graduate students' behavioral intention. Nonetheless, it indicated that performance expectancy, effort expectancy, social influence, facilitating conditions, and hedonic motivation had no direct effect on behavioral intention. The follow-up qualitative findings explained that since the students mainly used the GC platform off-campus, the GC App on their smartphones and the interesting content on the GC platform sustained their habitual tendencies toward employing the GC platform. Accordingly, the study explicates implications and recommendations for theory, policy, and practice.

摘要

混合式学习结合了面对面教学和在线学习体验。它利用在线学习管理系统,其中之一是谷歌课堂(GC)。然而,实证研究反映出在理解GC平台如何影响学生将其用于网络学习的行为意图方面存在文献空白。因此,本案例研究应用了扩展的技术接受与使用统一理论(UTAUT2)的修改版本作为理论基础,以研究影响研究生使用GC平台行为意图的因素。该研究采用混合方法解释性序列设计,首先分析了23名英语作为外语的研究生的调查数据,采用偏最小二乘结构方程模型(PLS-SEM)。随后,它进行了一个定性阶段,通过半结构化访谈收集数据并进行主题分析以进行评估。通过PLS-SEM结果的研究表明,学生对GC平台行为意图的最关键决定因素是习惯,而习惯取决于促进条件和享乐动机。此外,它表明促进条件是决定研究生行为意图的最重要的交互作用因素。尽管如此,它表明绩效期望、努力期望、社会影响、促进条件和享乐动机对行为意图没有直接影响。后续的定性研究结果解释说,由于学生主要在校外使用GC平台,他们智能手机上的GC应用程序和GC平台上有趣的内容维持了他们使用GC平台的习惯倾向。因此,该研究阐述了对理论、政策和实践的启示和建议。

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