用移动学习管理系统预测学生参与和意向的模型

Jehad Imlawi, Atallah Al-Shatnawi, Bader M AlFawwaz, Hasan M AL-Shatnawi, S. Al-masaeed
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引用次数: 0

摘要

目的/目的:本研究的目的是开发和评估一个综合模型,预测学生对移动学习管理系统(m-LMS)的参与程度和继续使用的意图。背景:m-LMS是高等教育中越来越流行的课程内容交付工具。了解影响学生参与和继续意愿的因素,可以帮助教育机构开发更有效和用户友好的m-LMS平台。方法:采用先前具有m-LMS经验的参与者来开发和评估所提出的模型,该模型借鉴了技术接受模型(TAM)、任务-技术契合(TTF)和其他相关模型。采用偏最小二乘-结构方程模型(PLS-SEM)对模型进行评价。贡献:本研究提供了一个综合考虑了多种影响敬业和持续意向因素的模型,具有较强的预测能力。研究结果:本研究结果为本模型较强的预测能力提供了证据,并支持了前人的研究。该模型确定了感知有用性、感知易用性、互动性、兼容性、享受和社会影响是显著影响学生参与和继续意愿的因素。对从业者的建议:本研究的发现可以帮助教育机构有效地满足学生对互动、有效和用户友好的m-LMS平台的需求。对研究人员的建议:本研究强调了理解学生参与m-LMS的前因的重要性。未来的研究应在不同的环境和不同的人群中对所提出的模型进行测试,以进一步验证其适用性。对社会的影响:参与模式可以帮助教育机构了解如何通过m-LMS提高学生的参与度和继续意愿,最终实现更有效和高效的移动学习。未来研究:应该进行更多的研究,在不同的环境和不同的人群中测试所提出的模型,以进一步验证其适用性。
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A Model Predicting Student Engagement and Intention with Mobile Learning Management Systems
Aim/Purpose: The aim of this study is to develop and evaluate a comprehensive model that predicts students’ engagement with and intent to continue using mobile-Learning Management Systems (m-LMS). Background: m-LMS are increasingly popular tools for delivering course content in higher education. Understanding the factors that affect student engagement and continuance intention can help educational institutions to develop more effective and user-friendly m-LMS platforms. Methodology: Participants with prior experience with m-LMS were employed to develop and evaluate the proposed model that draws on the Technology Acceptance Model (TAM), Task-Technology Fit (TTF), and other related models. Partial Least Squares-Structural Equation Modeling (PLS-SEM) was used to evaluate the model. Contribution: The study provides a comprehensive model that takes into account a variety of factors affecting engagement and continuance intention and has a strong predictive capability. Findings: The results of the study provide evidence for the strong predictive capability of the proposed model and supports previous research. The model identifies perceived usefulness, perceived ease of use, interactivity, compatibility, enjoyment, and social influence as factors that significantly influence student engagement and continuance intention. Recommendations for Practitioners: The findings of this study can help educational institutions to effectively meet the needs of students for interactive, effective, and user-friendly m-LMS platforms. Recommendation for Researchers: This study highlights the importance of understanding the antecedents of students’ engagement with m-LMS. Future research should be conducted to test the proposed model in different contexts and with different populations to further validate its applicability. Impact on Society: The engagement model can help educational institutions to understand how to improve student engagement and continuance intention with m-LMS, ultimately leading to more effective and efficient mobile learning. Future Research: Additional research should be conducted to test the proposed model in different contexts and with different populations to further validate its applicability.
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来源期刊
CiteScore
2.30
自引率
0.00%
发文量
14
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