一个可视化的深度学习框架,用于揭示学生的学习进展和学习瓶颈

IF 4 2区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH Journal of Educational Computing Research Pub Date : 2023-09-26 DOI:10.1177/07356331231200600
Chun Yan Enoch Sit, Siu-Cheung Kong
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引用次数: 1

摘要

教育过程挖掘的目的是帮助教师了解学生的整体学习过程。尽管深度学习模型在许多领域显示出有希望的结果,但由于缺乏参与者,许多在线课程中的事件日志数据集可能不足以让深度学习模型近似学生学习序列的概率分布。本研究提出了一个深度学习框架来帮助揭示学习者的学习进程。它旨在从事件日志中生成整个教育过程的图形表示。我们的框架采用生物信息学领域的Smith-Waterman算法来评估深度学习模型生成的一般学习序列。使用我们的框架,我们比较了经过修改的交叉注意层和未经修改的模型的深度学习模型的性能,发现修改后的模型优于另一个模型。该框架的贡献在于,它允许使用神经架构搜索技术来揭示学生的一般学习序列,而不考虑数据集的大小。该框架还帮助教育工作者识别存在学习瓶颈的教育材料,使他们能够改进材料及其各自的布局顺序,从而促进学生的学习。
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A Deep Learning Framework With Visualisation for Uncovering Students’ Learning Progression and Learning Bottlenecks
Educational process mining aims (EPM) to help teachers understand the overall learning process of their students. Although deep learning models have shown promising results in many domains, the event log dataset in many online courses may not be large enough for deep learning models to approximate the probability distribution of students’ learning sequence due to a lack of participants. This study proposes a deep learning framework to help uncover the learning progression of learners. It aims to produce a graphical representation of the overall educational process from event logs. Our framework adopts the Smith–Waterman algorithm from the bioinformatics field to evaluate general learning sequences generated from deep learning models. Using our framework, we compare the performance of a deep learning model with the modified cross-attention layer and a model without modification and find that the modified model outperforms the other. The contribution of this framework is that it enables the use of neural architecture search techniques to uncover students’ general learning sequence irrespective of the dataset’s size. The framework also helps educators identify education materials that present as learning bottlenecks, enabling them to improve the materials and their respective layout order, thus facilitating student learning.
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来源期刊
Journal of Educational Computing Research
Journal of Educational Computing Research EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
11.90
自引率
6.20%
发文量
69
期刊介绍: The goal of this Journal is to provide an international scholarly publication forum for peer-reviewed interdisciplinary research into the applications, effects, and implications of computer-based education. The Journal features articles useful for practitioners and theorists alike. The terms "education" and "computing" are viewed broadly. “Education” refers to the use of computer-based technologies at all levels of the formal education system, business and industry, home-schooling, lifelong learning, and unintentional learning environments. “Computing” refers to all forms of computer applications and innovations - both hardware and software. For example, this could range from mobile and ubiquitous computing to immersive 3D simulations and games to computing-enhanced virtual learning environments.
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