基于先决条件知识的自动课程规划,考虑语义学因素

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-04-24 DOI:10.1002/cae.22748
John J.-W. Yoo, Preamnath Balachandranath, Saeed Saboury
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引用次数: 0

摘要

基于知识的先修课程框架(KPF)是广泛用于课程设计的基于课程的先修课程框架(CPF)的替代方案。KPF 更为灵活,因为它只要求必备的先修知识,而 CPF 则更为死板,要求学生选修所有的先修课程。由于先修知识条款的数量一般远远多于先修课程的数量,因此灵活性会造成额外的复杂性。此外,KPF 不可避免地需要处理已定义知识术语的语义。本研究提出了一种新颖的人工智能(AI)规划数学模型,通过自动验证先决知识并将知识术语之间的分层语义关系纳入模型,从而实现 KPF。所提出的模型通过找到隐藏的或更好的解决方案,极大地提高了课程规划解决方案的质量,而这些解决方案在不考虑语义的情况下是无法获得的。综合实验结果表明,数学模型获得的解决方案是最优的,并证明了将语义纳入数学模型在解决方案质量方面的优越性。最后,关于可扩展性的实验结果表明,有必要开发高效的启发式算法。
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Prerequisite knowledge-based automated course planning with semantics consideration

The knowledge-based prerequisite framework (KPF) is an alternative to the course-based prerequisite framework (CPF), which is widely used for curriculum design. The KPF is more flexible because it only requires essential prerequisite knowledge, while the CPF is more rigid and requires students to take all prerequisite courses. Since the number of prerequisite knowledge terms is, in general, much greater than the number of prerequisite courses, flexibility can cause additional complexity. Furthermore, the KPF inevitably requires handling semantics of defined knowledge terms. This work presents a novel Artificial Intelligence (AI) Planning mathematical model that enables the KPF by automatically verifying prerequisite knowledge and incorporating hierarchical semantic relationships among knowledge terms into the model. The proposed model significantly improves the quality of course planning solutions by finding hidden or better solutions that could not be obtained without semantics consideration. The results of the comprehensive experiments show the optimality of the solutions obtained by the mathematical model and demonstrate the outperformance of incorporation of the semantics into the mathematical model, in terms of the quality of solutions. Finally, the experimental results on scalability show the necessity of the development of efficient heuristic algorithms.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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