基于知识的科学概念学习推荐系统

Ngai Cheong
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引用次数: 6

摘要

随着科技的进步和信息技术的发展,如大数据、人工智能(AI)和优化理论引发了许多领域的革命。伴随着海量的数字数据,也给了传统教与学的改革动力。如何在海量的信息中找到学生感兴趣的、有价值的、容易被理解的合适的信息,并带来他们的创造能力,仍然是一件困难的事情。基于学习者科学知识的电子学习推荐系统(RS)是解决这一问题的有力工具,它可以保证国际背景下科学教学的质量和效率。它是一个极具研究价值的科学研究方向之一。本文利用大数据软件平台,讨论了科学概念学习智能学习系统的总体框架设计,该系统的分析模型是基于学生概念学习能力的。本研究样本为2006 - 2021学年澳门理工学院计算机程序学科学概念导论(SC)课程的621名大三学生。根据学生的SK,他们的CL方法被分为六种思维模式,每种思维模式对应着三个不同的理解层次。考虑到学生的不同特点和理解能力,适当地向对信息感兴趣的学生推荐材料,如文本教材、计算机辅助材料、模拟工具和游戏活动等,可以增加学生学习的动机。这一RS的表现已被跟踪了16年,它可以有效地提高计算机科学领域的个性化教学质量,因为它可能有助于提高学生对科学CL的动机和兴趣。本文提出的推荐算法可以以类似的方式应用于不同的领域、主题和上下文。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge-based Recommender System of Conceptual Learning in Science
With the advancement of technology and the development of IT, such as big data, artificial intelligence (AI), and optimization theory have triggered revolutions in many fields. Along with the massive digital dataset, it also gives the reform motivation to promote traditional teaching and learning. How to find the appropriate information that students are interested, valuable, and easy to be understood in the vast amount of information, and bring their creative ability, is still a difficult thing. A Recommender System (RS) for e-learning based on learners’ Science Knowledge (SK) is a powerful tool to solve such problems, which can guarantee the quality and efficiency of the science teaching and learning in the international context. It is one of science research directions with great research value. This paper discusses the overall framework design of a wisdom RS for conceptual learning (CL) in science, which analysis models are based on SK of the students, using a big data software platform. The research sample is made of totally 621 junior students who take the subject of an introductory in science concepts (SC) in Computer Studies of Program, Macao Polytechnic Institution, from 2006 to 2021 academic year. According to the students’ SK, their CL methods have been classified into six types of thinking modes, which has three different corresponding understanding levels for each mode. The appropriate recommended materials to the students who are interested in the information provided, such as, text-based teaching materials, computer assisted materials, simulation tools and game activities, can increases the motivations of the students to learn, considered their different characteristics and understanding. The performance of this RS has been tracked over a period of 16 years, which can effectively improve the personalized teaching quality in the area of computer science, since it may be useful in heightening students’ motivation and interest in CL in science. The recommendation algorithm presented in this paper may be applied for a similar fashion across different domains, topics and contexts.
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