虚拟学习环境中基于会话的时间窗识别的可视化分析

Aleksandra Maslennikova, D. Rotelli, A. Monreale
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引用次数: 0

摘要

由于在线学习课程的灵活性,学生可以通过决定何时学习、学习什么以及如何学习来组织和管理自己的学习时间。每个人都有独特的学习习惯,这些习惯可以识别他们的行为,并将他们与其他人区分开来。为了探索学生在一段时间内的行为,在这项工作中,我们试图确定足够的时间窗口,可以用来调查学生在在线学习环境中的时间行为。我们首先提出了一种新的视角来识别基于个人需求的各种类型的会话。文献中的大多数工作通过设置任意会话超时阈值来解决此问题。在本文中,我们提出了一种算法来帮助我们确定最合适的会话阈值。然后,基于识别的会话,我们使用数据驱动的方法确定时间窗口。为此,我们创建了一个可视化工具,帮助数据科学家和研究人员确定会话识别的最佳设置和定位合适的时间窗口。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual Analytics for Session-based Time-Windows Identification in Virtual Learning Environments
Due to the flexibility of online learning courses, students organise and manage their own learning time by deciding when, what, and how to study. Each individual has distinctive learning habits that identify their behaviours and set them apart from others. To explore how students behave over time, in this work we seek to identify adequate time-windows that could be used to investigate the temporal behaviour of students in online learning environments. We first propose a novel perspective to identify various types of sessions based on individual requirements. Most of the works in the literature address this problem by setting an arbitrary session timeout threshold. In this paper we propose an algorithm that helps us in determining the most suitable threshold for the session. Then, based on the identified sessions, we determine time-windows using data-driven methods. To this end, we created a visual tool that assists data scientists and researchers in determining the optimal settings for the session identification and locating suitable time-windows.
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