教育流数据分析:个案研究

Gabriella Casalino, G. Castellano, Andrea Mannavola, G. Vessio
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引用次数: 2

摘要

虚拟学习环境(VLEs)是提供教育内容和学习支持工具的基于网络的平台。记录学生和vle之间互动的日志每天都在收集,因此需要自动化技术来管理和分析如此大量的数据。学生、教师、管理人员以及参与VLEs学习活动的所有利益相关者都可以利用来自教育数据的见解,并且可以通过使用机器学习技术提取有用的信息。传统上,使用传统的机器学习方法将教育数据作为平稳数据进行研究。然而,教育数据本质上是非平稳的,可以更好地将其视为数据流。在本文中,我们展示了一项分类研究的结果,其中随机森林算法应用于批处理和自适应模式,用于开发预测学生考试失败/成功的模型。此外,还进行了特征重要性分析,以检测预测任务中最具判别性的属性。在开放大学学习分析数据集(OULAD)上进行的实验显示了自适应随机森林在从不断变化的教育数据中创建准确分类模型方面的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Educational Stream Data Analysis: A Case Study
Virtual Learning Environments (VLEs) are Web-based platforms where educational contents, together with study support tools, are provided. Logs recording the interactions between students and VLEs are collected on a daily basis, thus automatic techniques are needed to manage and analyze such huge quantities of data. Students, teachers, managers, and in general all stakeholders involved in the VLEs’ learning activities, can take advantage of the insights coming from educational data and useful information can be extracted by using machine learning techniques. Traditionally, educational data have been studied as stationary data by using conventional machine learning methods. However, educational data are non-stationary by nature and they can be better treated as data streams. In this paper, we show the results of a classification study where the random forest algorithm, applied both in batch and adaptive mode, is used to develop a model for predicting the failure/success of students’ exams. Moreover, a feature importance analysis is carried out to detect the most discriminant attributes for the predictive task. Experiments were performed on the Open University Learning Analytics Dataset (OULAD) showing the reliability of adaptive random forest in creating accurate classification models from evolving educational data.
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