高质量混合学习参与性分析的数据驱动建模

IF 0.7 Q3 EDUCATION & EDUCATIONAL RESEARCH Journal of E-Learning and Knowledge Society Pub Date : 2019-10-12 DOI:10.20368/1971-8829/1135027
Nan Yang, P. Ghislandi, J. Raffaghelli, G. Ritella
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引用次数: 2

摘要

参与分析是学习分析(LA)的一个分支,主要关注学生的参与,大多数研究都是由计算机科学家进行的。因此,该领域的研究通常将教育视为算法优化的场景,而不是专注于学习,很少得出对实践的启示。作为一个研究领域,LA已经有近十年的历史,但它对我们理解教与学的贡献和对学习促进的影响还不充分。本文认为,参与性分析的数据驱动建模有助于评估学生的参与性,并促进对教学质量的反思。在本文中,作者a)介绍了四个关键结构(学生参与、学习分析、参与分析、建模和数据驱动建模);B)解释为什么选择数据驱动建模进行用户粘性分析,以及使用预定义框架的局限性;C)讨论如何使用参与分析来促进教学反思
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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Data-Driven Modeling of Engagement Analytics for Quality Blended Learning
Engagement analytics is a branch of learning analytics (LA) that focuses on student engagement, with most studies conducted by computer scientists. Thus, rather than focusing on learning, research in this field usually treats education as a scenario for algorithms optimization and it rarely concludes with implications for practice. While LA as a research field is reaching ten years, its contribution to our understanding of teaching and learning and its impact on learning enhancement are still underdeveloped. This paper argues that data-driven modeling of engagement analytics is helpful to assess student engagement and to promote reflections on the quality of teaching and learning. In this article, the authors a) introduce four key constructs (student engagement, learning analytics, engagement analytics, modeling and data-driven modeling); b) explain why data-driven modeling is chosen for engagement analytics and the limitations of using a predefined framework; c) discuss how to use engagement analytics to promote pedagogical reflection
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来源期刊
Journal of E-Learning and Knowledge Society
Journal of E-Learning and Knowledge Society EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
2.30
自引率
0.00%
发文量
0
审稿时长
12 weeks
期刊介绍: SIe-L , Italian e-Learning Association, is a non-profit organization who operates as a non-commercial entity to promote scientific research and testing best practices of e-Learning and Distance Education. SIe-L consider these subjects strategic for citizen and companies for their instruction and education.
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