Applying the time continuum model of motivation to explain how major factors affect mobile learning motivation: a comparison of SEM and fsQCA

Mingyue Fan, Juliet Wanza Ndavi, S. A. Qalati, Lin Huang, Zhengjia Pu
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引用次数: 9

Abstract

PurposeStudying mobile learning – the use of electronic devices (i.e. cellphone and tablets) to engage in learning across multiple contexts via connection to peers, media, experts and the larger world is a relatively new academic enterprise. This study analyzes the influencing factors of mobile learning (M-learning) motivation based on the time continuum model of motivation (TCMM).Design/methodology/approachThe study uses structural equation modeling (SEM) and fuzzy-set qualitative comparative analysis (fsQCA) to verify relationships between mobile learning motivation, attitude, need, stimulation, emotion, ability and reinforcement. Justification for the use of both methods lies in the complementarity relationships that existed between the variables and research methodologies. The sample contains 560 mobile learners' feedback.FindingsResults show that attitude, need, emotion, ability and reinforcement are important factors to enhance mobile learning motivation, while stimulation is not.Practical implicationsThis work highlights the importance of training for app designers on how to design an M-learning App with high learning motivation by paying prior attention to learning content, teaching team and online learning communities.Originality/valueThis study proposes three precise solutions (scholars, managers and practitioners) to improve learning motivation based on the categorization of mobile learners.Peer reviewThe peer review history for this article is available at: https://publons.com/publon/10.1108/OIR-04-2021-0226.
应用动机的时间连续模型解释主要因素对移动学习动机的影响:SEM和fsQCA的比较
研究移动学习——使用电子设备(即手机和平板电脑)通过与同伴、媒体、专家和更大的世界的联系,在多种环境中进行学习,是一项相对较新的学术事业。本研究基于动机的时间连续体模型(TCMM)分析了移动学习动机的影响因素。本研究采用结构方程模型(SEM)和模糊集定性比较分析(fsQCA)来验证移动学习动机、态度、需求、刺激、情感、能力和强化之间的关系。使用这两种方法的理由在于变量和研究方法之间存在互补性关系。样本包含560个移动学习者的反馈。结果表明,态度、需求、情感、能力和强化是影响学生移动学习动机的重要因素,而刺激则不是。本研究强调了对应用程序设计师进行培训的重要性,即如何通过事先关注学习内容、教学团队和在线学习社区来设计具有高学习动机的移动学习应用程序。独创性/价值本研究在对移动学习者进行分类的基础上,提出了三种提高学习动机的精确解决方案(学者、管理者和实践者)。同行评议本文的同行评议历史可在:https://publons.com/publon/10.1108/OIR-04-2021-0226。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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