分析学生笔记和问题,创建个性化的学习指南

P. Samson
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引用次数: 1

摘要

在可预见的未来,从技术上讲,学院或大学的教师、顾问和其他委托代表可以近乎实时地访问学生的参与和表现数据。增加数据流的一个潜在好处可能包括提高识别有学业失败或退学风险的学生的能力。这些数据的可用性也可能导致创建新的适应性学习措施,可以自动为学生提供个性化的指导。本演示将描述如何挖掘学生笔记和问题,以提供自动链接到外部资源的学生学习指南。该演示还将报告这些新的学习指南是如何被学生接受的,以及它们如何至少部分地对学生成绩的显著提高负责。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing student notes and questions to create personalized study guides
In the foreseeable future it will be technically possible for instructors, advisors and other delegated representatives of a college or university to access student participation and performance data in near-real time. One potential benefit of this increased data flow could include an improved ability to identify students at risk of academic failure or withdrawal. The availability of these data could also lead to creation of new adaptive learning measures that can automatically provide students personalized guidance. This demonstration will describe how the student notes and questions are being mined to provide student study guides that automatically link to outside resources. The demonstration will also report on how these new study guides have been received by the students and how they are at least partially responsible for a significant increase in student outcomes.
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