Predicting University Students' Exam Performance Using a Model-Based Adaptive Fact-Learning System

Florian Sense, M. V. D. Velde, H. Rijn
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引用次数: 10

Abstract

Modern educational technology has the potential to support students to use their study time more effectively. Learning analytics can indicate relevant individual differences between learners, which adaptive learning systems can use to tailor the learning experience to individual learners. For fact learning, cognitive models of human memory are well suited to tracing learners’ acquisition and forgetting of knowledge over time. Such models have shown great promise in controlled laboratory studies. To work in realistic educational settings, however, they need to be easy to deploy and their adaptive components should be based on individual differences relevant to the educational context and outcomes. Here, we focus on predicting university students’ exam performance using a model-based adaptive fact-learning system. The data presented here indicate that the system provides tangible benefits to students in naturalistic settings. The model’s estimate of a learner’s rate of forgetting predicts overall grades and performance on individual exam questions. This encouraging case study highlights the value of model-based adaptive fact-learning systems in classrooms
基于模型的自适应事实学习系统预测大学生考试成绩
现代教育技术有潜力支持学生更有效地利用他们的学习时间。学习分析可以指出学习者之间的相关个体差异,适应性学习系统可以使用这些差异来为个体学习者量身定制学习体验。对于事实学习,人类记忆的认知模型非常适合追踪学习者在一段时间内对知识的习得和遗忘。这种模型在受控的实验室研究中显示出很大的希望。然而,要在现实的教育环境中工作,它们需要易于部署,其适应性组件应基于与教育环境和结果相关的个体差异。在这里,我们专注于使用基于模型的自适应事实学习系统来预测大学生的考试成绩。这里提供的数据表明,该系统为学生在自然环境中提供了切实的好处。该模型对学习者遗忘率的估计可以预测其整体成绩和在个别考试问题上的表现。这个令人鼓舞的案例研究强调了基于模型的适应性事实学习系统在课堂上的价值
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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