论文标题
课程前提网络,用于分析和理解学术课程
Course-Prerequisite Networks for Analyzing and Understanding Academic Curricula
论文作者
论文摘要
了解课程之间复杂的关系系统对于大学的教育任务至关重要。本文致力于研究课程基础网络(CPN)的研究,其中节点代表课程和有名的链接代表了它们之间的正式先决条件。 CPN的主要目标是建模课程之间的相互作用,代表学术课程中的知识流,并作为可视化,分析和优化复杂课程的关键工具。首先,我们考虑几种经典的中心度度量,在CPN的背景下讨论其含义,并将其用于识别重要课程。接下来,我们使用网络的拓扑分层来描述CPN的层次结构。最后,我们执行相互依存的分析,该分析允许量化大学分裂之间的知识流量的强度,并有助于确定最依赖性,有影响力和跨学科的研究领域。我们讨论学生,教职员工和管理人员如何使用课程前提的网络来检测重要课程,改善现有课程并创建新课程,浏览复杂的课程,分配教学资源,增加部门之间的跨学科互动,改进课程以及增强学生的学习经验。提出的方法可用于分析任何CPN,并通过在加利福尼亚理工学院教授的课程网络进行说明。本文分析的网络数据在GitHub存储库中公开可用。
Understanding a complex system of relationships between courses is of great importance for the university's educational mission. This paper is dedicated to the study of course-prerequisite networks (CPNs), where nodes represent courses and directed links represent the formal prerequisite relationships between them. The main goal of CPNs is to model interactions between courses, represent the flow of knowledge in academic curricula, and serve as a key tool for visualizing, analyzing, and optimizing complex curricula. First, we consider several classical centrality measures, discuss their meaning in the context of CPNs, and use them for the identification of important courses. Next, we describe the hierarchical structure of a CPN using the topological stratification of the network. Finally, we perform the interdependence analysis, which allows to quantify the strength of knowledge flow between university divisions and helps to identify the most intradependent, influential, and interdisciplinary areas of study. We discuss how course-prerequisite networks can be used by students, faculty, and administrators for detecting important courses, improving existing and creating new courses, navigating complex curricula, allocating teaching resources, increasing interdisciplinary interactions between departments, revamping curricula, and enhancing the overall students' learning experience. The proposed methodology can be used for the analysis of any CPN, and it is illustrated with a network of courses taught at the California Institute of Technology. The network data analyzed in this paper is publicly available in the GitHub repository.