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Knowledge Acquisition for Learning Analytics: Comparing Teacher-Derived, Algorithm-Derived, and Hybrid Models in the Moodle Engagement Analytics Plugin

机译:学习分析的知识获取:比较Moodle参与度分析插件中的教师衍生,算法衍生和混合模型

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One of the promises of big data in higher education (learning analytics) is being able to accurately identify and assist students who may not be engaging as expected. These expectations, distilled into parameters for learning analytics tools, can be determined by human teacher experts or by algorithms themselves. However, there has been little work done to compare the power of knowledge models acquired from teachers and from algorithms. In the context of an open source learning analytics tool, the Moodle Engagement Analytics Plugin, we examined the ability of teacher-derived models to accurately predict student engagement and performance, compared to models derived from algorithms, as well as hybrid models. Our preliminary findings, reported here, provided evidence for the fallibility and strength of teacher- and algorithm-derived models, respectively, and highlighted the benefits of a hybrid approach to model- and knowledge-generation for learning analytics. A human in the loop solution is therefore suggested as a possible optimal approach.
机译:高等教育中大数据(学习分析)的承诺之一是能够准确识别并帮助可能未如预期的学生。这些期望被提炼为用于学习分析工具的参数,可以由人类教师专家或算法本身来确定。但是,很少有工作可以比较从教师和算法获得的知识模型的功能。在开源学习分析工具Moodle Engagement Analytics插件的上下文中,我们研究了与源自算法和混合模型的模型相比,由教师衍生的模型能够准确预测学生的参与度和表现的能力。我们在这里报告的初步发现分别为教师和算法派生的模型的易错性和强度提供了证据,并强调了用于学习分析的模型和知识生成的混合方法的好处。因此,建议在回路中采用人为解决方案是一种可能的最佳方法。

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