数据驱动的课程分析技术

G. Méndez, X. Ochoa, K. Chiluiza
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引用次数: 34

摘要

学习分析研究的关键承诺之一是创造工具,帮助教育机构更好地了解其项目的内部运作,以便调整或纠正它们。这项工作提出了一套简单的技术,应用于现成的历史学术数据可以提供这样的见解。所描述的技术是实际课程难度估计,依赖性估计,课程一致性,辍学路径和负载/性能图。这些技术的描述是伴随着它的应用,从一个计算机科学程序的实际学术数据。分析的结果被用来获得课程重新设计的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Techniques for data-driven curriculum analysis
One of the key promises of Learning Analytics research is to create tools that could help educational institutions to gain a better insight of the inner workings of their programs, in order to tune or correct them. This work presents a set of simple techniques that applied to readily available historical academic data could provide such insights. The techniques described are real course difficulty estimation, dependance estimation, curriculum coherence, dropout paths and load/performance graph. The description of these techniques is accompanied by its application to real academic data from a Computer Science program. The results of the analysis are used to obtain recommendations for curriculum re-design.
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