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通过使用教学设计模型进行智能学习材料交付来改善学习者与计算机的交互

Improving Learner-Computer Interaction through Intelligent Learning Material Delivery Using Instructional Design Modeling.

作者信息

Troussas Christos, Krouska Akrivi, Sgouropoulou Cleo

机构信息

Department of Informatics and Computer Engineering, University of West Attica, 12243 Egaleo, Greece.

出版信息

Entropy (Basel). 2021 May 26;23(6):668. doi: 10.3390/e23060668.

DOI:10.3390/e23060668
PMID:34073243
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8226587/
Abstract

This paper describes an innovative and sophisticated approach for improving learner-computer interaction in the tutoring of Java programming through the delivery of adequate learning material to learners. To achieve this, an instructional theory and intelligent techniques are combined, namely the Component Display Theory along with content-based filtering and multiple-criteria decision analysis, with the intention of providing personalized learning material and thus, improving student interaction. Until now, the majority of the research efforts mainly focus on adapting the presentation of learning material based on students' characteristics. As such, there is free space for researching issues like delivering the appropriate type of learning material, in order to maintain the pedagogical affordance of the educational software. The blending of instructional design theories and sophisticated techniques can offer a more personalized and adaptive learning experience to learners of computer programming. The paper presents a fully operating intelligent educational software. It merges pedagogical and technological approaches for sophisticated learning material delivery to students. Moreover, it was used by undergraduate university students to learn Java programming for a semester during the COVID-19 lockdown. The findings of the evaluation showed that the presented way for delivering the Java learning material surpassed other approaches incorporating merely instructional models or intelligent tools, in terms of satisfaction and knowledge acquisition.

摘要

本文描述了一种创新且复杂的方法,通过向学习者提供充足的学习材料来改善Java编程辅导中学习者与计算机的交互。为实现这一目标,将一种教学理论与智能技术相结合,即成分显示理论以及基于内容的过滤和多标准决策分析,旨在提供个性化的学习材料,从而改善学生的交互。到目前为止,大多数研究工作主要集中在根据学生的特点调整学习材料的呈现方式。因此,在研究诸如提供合适类型的学习材料等问题上仍有空间,以便维持教育软件的教学功能。教学设计理论与复杂技术的融合可以为计算机编程学习者提供更个性化和适应性更强的学习体验。本文展示了一个完全运行的智能教育软件。它融合了教学和技术方法,以便向学生提供复杂的学习材料。此外,在新冠疫情封锁期间,大学生使用该软件学习了一个学期的Java编程。评估结果表明,就满意度和知识获取而言,所呈现的Java学习材料交付方式优于其他仅包含教学模型或智能工具的方法。