Intelligent Learning Analytics Dashboards: Automated Drill-Down Recommendations to Support Teacher Data Exploration

Hassan Khosravi, Shiva Shabaninejad, Aneesha Bakharia, S. Sadiq, M. Indulska, D. Gašević
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引用次数: 12

Abstract

Learning analytics dashboards commonly visualize data about students with the aim of helping students and educators understand and make informed decisions about the learning process. To assist with making sense of complex and multidimensional data, many learning analytics systems and dashboards have relied strongly on AI algorithms based on predictive analytics. While predictive models have been successful in many domains, there is an increasing realization of the inadequacies of using predictive models in decision-making tasks that affect individuals without human oversight. In this paper, we employ a suite of state-of-the-art algorithms, from the online analytics processing, data mining, and process mining domains, to present an alternative human-in-the-loop AI method to enable educators to identify, explore, and use appropriate interventions for subpopulations of students with the highest deviation in performance or learning process compared to the rest of the class. We demonstrate an application of our proposed approach in an existing learning analytics dashboard (LAD) and explore the recommended drill-downs in a course with 875 students. The demonstration provides an example of the recommendations from real course data and shows how recommendations can lead the user to interesting insights. Furthermore, we demonstrate how our approach can be employed to develop intelligent LADs.
智能学习分析仪表板:支持教师数据探索的自动下钻建议
学习分析仪表板通常将学生的数据可视化,目的是帮助学生和教育工作者了解并做出有关学习过程的明智决策。为了帮助理解复杂的多维数据,许多学习分析系统和仪表板都非常依赖基于预测分析的人工智能算法。虽然预测模型在许多领域取得了成功,但人们越来越认识到,在没有人为监督的情况下,在影响个人的决策任务中使用预测模型的不足之处。在本文中,我们采用了一套最先进的算法,从在线分析处理、数据挖掘和过程挖掘领域,提出了一种替代的人在循环人工智能方法,使教育工作者能够识别、探索和使用适当的干预措施,针对与班上其他学生相比,在表现或学习过程中偏差最大的学生亚群。我们在现有的学习分析仪表板(LAD)中演示了我们提出的方法的应用,并在有875名学生的课程中探索了推荐的钻取。该演示提供了一个来自真实课程数据的推荐示例,并展示了推荐如何引导用户获得有趣的见解。此外,我们还演示了如何将我们的方法用于开发智能lad。
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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