Using learning analytics to support STEAM students’ academic achievement and self-regulated learning

Stéphanie García-Senín, Marta Arguedas, T. Daradoumis
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引用次数: 0

Abstract

Abstract The assessment of students’ academic achievements helps to increase learning effectiveness by encouraging each student to recognise his/her strengths and areas for improvement. To do so, pedagogical activities that encourage direct and frequent evaluation must be considered. This paper focuses on how a learning management system such as Google Classroom (GC) together with learning analytics (LA) can be used to extract and analyse learner’s data from Science, Technology, Engineering, Art and Mathematics (STEAM) course. In addition, we explore how to employ these data to support metacognitive skills such as self-regulated learning (SRL). An explanatory sequential mixed-method design research was used, and two research questions were set, discussed and analysed. Data collection involved 128 participants. Our findings confirmed the potential of using achievement-based grading rubrics data and LA tools to provide empirical evidence of how formative assessment can affect students’ SRL development. While onsite experience has revealed some important initial findings, further research is needed. To validate these results, it will be necessary to perform similar analyses on datasets obtained from other schools and subject areas. Despite the increasing interest in use of LA, there is a scarcity of research on this field for secondary school education.
使用学习分析来支持STEAM学生的学业成就和自我调节学习
学生学业成绩的评估通过鼓励每个学生认识到自己的优势和需要改进的地方,有助于提高学习效率。为此,必须考虑鼓励直接和经常评价的教学活动。本文的重点是如何使用b谷歌课堂(GC)等学习管理系统和学习分析(LA)来提取和分析科学、技术、工程、艺术和数学(STEAM)课程中的学习者数据。此外,我们还探讨了如何利用这些数据来支持元认知技能,如自我调节学习(SRL)。采用解释性顺序混合方法设计研究,并对两个研究问题进行了设置、讨论和分析。数据收集涉及128名参与者。我们的研究结果证实了使用基于成就的评分标准数据和LA工具为形成性评估如何影响学生的SRL发展提供经验证据的潜力。虽然现场经验揭示了一些重要的初步发现,但还需要进一步的研究。为了验证这些结果,有必要对从其他学校和学科领域获得的数据集进行类似的分析。尽管人们对使用LA的兴趣越来越大,但在中学教育中对这一领域的研究却很少。
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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