How to quantify an examination? Evidence from physics examinations via complex networks

Min Xia, Zhu Su, Weibing Deng, Xiumei Feng, Benwei Zhang
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Abstract

Given the untapped potential for continuous improvement of examinations, quantitative investigations of examinations could guide efforts to considerably improve learning efficiency and evaluation and thus greatly help both learners and educators. However, there is a general lack of quantitative methods for investigating examinations. To address this gap, we propose a new metric via complex networks; i.e., the knowledge point network (KPN) of an examination is constructed by representing the knowledge points (concepts, laws, etc.) as nodes and adding links when these points appear in the same question. Then, the topological quantities of KPNs, such as degree, centrality, and community, can be employed to systematically explore the structural properties and evolution of examinations. In this work, 35 physics examinations from the NCEE examination spanning from 2006 to 2020 were investigated as an evidence. We found that the constructed KPNs are scale-free networks that show strong assortativity and small-world effects in most cases. The communities within the KPNs are obvious, and the key nodes are mainly related to mechanics and electromagnetism. Different question types are related to specific knowledge points, leading to noticeable structural variations in KPNs. Moreover, changes in the KPN topology between examinations administered in different years may offer insights guiding college entrance examination reforms. Based on topological quantities such as the average degree, network density, average clustering coefficient, and network transitivity, the Fd is proposed to evaluate examination difficulty. All the above results show that our approach can comprehensively quantify the knowledge structures and examination characteristics. These networks may elucidate comprehensive examination knowledge graphs for educators and guide improvements in teaching.
如何量化考试?通过复杂网络从物理考试中获取证据
鉴于考试的持续改进潜力尚待开发,对考试的定量研究可以指导人们努力大大提高学习效率和评价,从而极大地帮助学习者和教育者。然而,目前普遍缺乏对考试进行定量研究的方法。针对这一缺陷,我们提出了一种新的度量方法--知识点网络(KPN),即通过将知识点(概念、定律等)表示为节点,并在这些知识点出现在同一试题中时添加链接,从而构建出考试的知识点网络。然后,可以利用 KPN 的拓扑量(如度、中心性和群落)来系统地探索考试的结构特性和演变。本研究以2006年至2020年国家教育考试中的35门物理试题为研究对象。我们发现所构建的KPN是无标度网络,在大多数情况下表现出很强的排序性和小世界效应。KPN内部的群落明显,关键节点主要与力学和电磁学有关。不同的问题类型与特定的知识点相关,从而导致 KPN 结构的明显变化。此外,不同年份考试之间的KPN拓扑结构的变化也可以为高考改革提供启示。基于平均度、网络密度、平均聚类系数和网络传递性等拓扑量,提出了评价考试难度的Fd。上述结果表明,我们的方法可以全面量化知识结构和考试特征。这些网络可以为教育工作者阐明全面的考试知识图谱,指导教学改进。
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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