Student modeling using principal component analysis of SOM clusters

Chien-Sing Lee, Y. P. Singh
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引用次数: 14

Abstract

Adaptive hypermedia learning systems aim to improve the usability of hypermedia by personalizing domain knowledge to the students' needs (represented by the student model). This study investigates student modeling via machine-learning techniques. Two techniques are applied and compared to provide meaningful analysis and class labels of the student clusters. The first technique is clustering of the student data set using principal component analysis. The second technique involves two-levels of clustering: the self organizing map at the first level and principal component analysis at the second level. Cluster analysis via these two techniques determine the number of clusters, the class labels based on the degree of variance and eigenvectors, which can represent the knowledge states of each cluster or group of students. It is found that implementing the self-organizing map as a preprocessor to principal component analysis improves the quality of cluster analysis. Findings are supported by experimental results.
学生使用SOM聚类的主成分分析建模
自适应超媒体学习系统旨在通过个性化领域知识来满足学生的需求(由学生模型表示),从而提高超媒体的可用性。本研究通过机器学习技术调查学生建模。两种技术的应用和比较,提供有意义的分析和班级标签的学生群。第一种技术是使用主成分分析对学生数据集进行聚类。第二种技术涉及两层聚类:第一级的自组织映射和第二级的主成分分析。聚类分析通过这两种技术确定聚类的数量、基于方差度的类标签和特征向量,它们可以代表每个聚类或组学生的知识状态。研究发现,将自组织映射作为主成分分析的预处理,提高了聚类分析的质量。研究结果得到了实验结果的支持。
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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