论文标题

VLSI启发的学生学习社区创建和改进的方法

VLSI-Inspired Methods for Student Learning Community Creation and Refinement

论文作者

Cao, Sheng Lun

论文摘要

Covid-19严重破坏了学术机构中教育内容的方式,迅速加速了在线学习和混合学习。本文探讨了优化的学生学习社区的创建和完善,以此作为支持在大流行和大流行后的在线学习和混合学习的手段。参加大学课程的学生可以建模为类似于电路网列的入学网络。学习社区是通过将学生聚类为小组来创建的,以最大程度地进行内部联系以支持学生学习,并最少的外部联系以减少疾病传播。三种基于VLSI的聚类算法:将高度块状,修饰的超edge缩放和最佳选择修改为聚类学生入学网络。通过使用相同的优化标准,通过模拟退火算法进一步完善了由聚类算法创建的学习群落。学习社区的创建和改进框架结合了网络建模,学习社区创建和学习社区改进的所有三个阶段。提出的框架在2020年秋季的第三年电气工程数据集和2020年秋季和2021年冬季注册数据集中进行了测试。最佳选择在聚类算法中表现最好,能够为给定最大群集大小的优化标准创建学习社区。模拟退火可以通过显着提高集群质量来完善聚类结果。该框架能够为小型和大型入学网络创建和完善学习社区,但它更适合在计划层面创建量身定制的学习社区。应探讨未来的工作,包括根据其他优化标准创建学生学习社区。

COVID-19 significantly disrupted how educational contents are delivered in academic institutions, rapidly accelerating the adoption of online and blended learning. This thesis explores the creation and refinement of optimized student learning communities as a mean to support online and blended learning in the pandemic and post-pandemic setting. Students enrolled in university courses can be modeled as an enrollment network akin to a circuit netlist. Learning communities are created by clustering students into groups, optimized for maximum internal connection to support student learning, and minimum external connection to reduce disease transmission. Three VLSI-based clustering algorithms: Hyperedge Coarsening, Modified Hyperedge Coarsening, and Best Choice, are modified to cluster student enrollment networks. The learning communities created by the clustering algorithms are further refined by the Simulated Annealing algorithm using the same optimization criteria. The Learning Community Creation and Refinement Framework combines all three stages of network modeling, learning community creation, and learning community refinement. The proposed framework is tested on both the 3rd year Electrical Engineering Fall 2020 enrollment dataset and a very large Fall 2020 and Winter 2021 enrollment dataset. Best Choice performed the best among the clustering algorithms, capable of creating learning communities for the optimization criteria for a given maximum cluster size. Simulated Annealing can refine the clustering results by significantly increase cluster quality. The framework is capable of creating and refining learning communities for both the small and the large enrollment networks, but it is better suited for creating tailored learning communities at a program level. Future work, including creating student learning communities based on other optimization criteria, should be explored.

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