Student Behavior Clustering Method Based on Campus Big Data

Dong Ding, Junhuai Li, Huaijun Wang, Zhu Liang
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引用次数: 17

Abstract

Nowadays, a large amount of valuable data have been accumulated. According to the big data from the management system of university, we attempt to subdivide students' behavior into different groups from various aspects, so as to identifying the different groups of students. Given this, this paper can get the characteristics of students from different groups. In this way, universities can know students well and manage them reasonably. First, in order to solve the segmentation of student behavior, this paper presents a set of description index system of student behavior and the segmentation model of student behavior based on clustering analysis. Meanwhile, in order to obtain more accurate clustering results, the traditional K-Means clustering algorithm is improved from the selection of the initial clustering center and the number of clusters. In addition, the improved method is parallelized on the Spark platform and applied to subdivide student behavior into different groups. Finally, experiments are conducted to verify the reliability of the results.
基于校园大数据的学生行为聚类方法
如今,已经积累了大量有价值的数据。根据来自高校管理系统的大数据,我们试图从各个方面将学生的行为细分为不同的群体,从而识别不同的学生群体。基于此,本文可以得到不同群体学生的特点。这样,大学才能更好地了解学生,合理地管理学生。首先,为了解决学生行为分割问题,本文提出了一套学生行为描述指标体系和基于聚类分析的学生行为分割模型。同时,为了获得更准确的聚类结果,从初始聚类中心的选择和聚类个数两个方面对传统的K-Means聚类算法进行了改进。此外,改进的方法在Spark平台上并行化,并应用于学生行为细分。最后,通过实验验证了所得结果的可靠性。
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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