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Data Analysis of College Students’ Mental Health Based on Clustering Analysis Algorithm

机译:基于聚类分析算法的大学生心理健康数据分析

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Mental health is an important basic condition for college students to become adults. Educators gradually attach importance to strengthening the mental health education of college students. This paper makes a detailed analysis and research on college students’ mental health, expounds the development and application of clustering analysis algorithm, applies the distance formula and clustering criterion function commonly used in clustering analysis, and makes a specific description of some classic algorithms of clustering analysis. Based on expounding the advantages and disadvantages of fast-clustering analysis algorithm and hierarchical clustering analysis algorithm, this paper introduces the concept of the two-step clustering algorithm, discusses the algorithm flow of clustering model in detail, and gives the algorithm flow chart. The main work of this paper is to analyze the clustering algorithm of students’ mental health database formed by mental health assessment tool test, establish a data mining model, mine the database, analyze the state characteristics of different college students’ mental health, and provide corresponding solutions. In order to meet the needs of the psychological management system based on the clustering analysis method, the clustering analysis algorithm is used to cluster the data. Based on the original database, this paper establishes the methods of selecting, cleaning, and transforming the data of students’ psychological archives. Finally, it expounds on the application of data mining in students’ psychological management system and summarizes and prospects the implementation of the system.
机译:心理健康是大学生成为成年人的重要基本条件。教育工作者逐步重视加强大学生心理健康教育。本文对大学生的心理健康进行了详细的分析和研究,阐述了聚类分析算法的开发和应用,适用于聚类分析中的距离公式和群集标准功能,并对一些经典算法进行了特定描述分析。基于阐述快速聚类分析算法和分层聚类分析算法的优点和缺点,本文介绍了两步聚类算法的概念,详细讨论了聚类模型的算法流程,并提供了算法流程图。本文的主要工作是分析精神健康评估工具测试,建立数据挖掘模型,挖掘数据库的学生心理健康数据库的聚类算法,分析了不同大学生心理健康的状态特征,并提供相应的解决方案。为了满足基于聚类分析方法的心理管理系统的需求,群集分析算法用于聚类数据。基于原始数据库,本文建立了选择,清洁和转换学生心理档案数据的方法。最后,它阐述了数据挖掘在学生心理管理系统中的应用,总结和前景实施。

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