How to quantify an examination? Evidence from physics examinations via complex networks
Min Xia, Zhu Su, Weibing Deng, Xiumei Feng, Benwei Zhang

TL;DR
This paper introduces a novel complex network-based metric to analyze and quantify the structure of physics examinations, revealing insights into their knowledge organization and potential for educational improvement.
Contribution
It develops a new method using knowledge point networks to systematically analyze examination structures and their evolution over time.
Findings
KPNs are scale-free networks with small-world properties.
Community structures are prominent, especially around mechanics and electromagnetism.
Topological metrics can evaluate examination difficulty and guide reforms.
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…
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Taxonomy
TopicsComputational Physics and Python Applications · Seismology and Earthquake Studies · Cognitive Science and Education Research
