Faculty of Health Sciences, SALBIS Research Group, Campus de Ponferrada, Universidad de León, León, Spain.
Department of Electric, SALBIS Research Group, Systems and Automatics Engineering, Universidad de León, León, León, Spain.
PLoS One. 2023 Aug 15;18(8):e0289553. doi: 10.1371/journal.pone.0289553. eCollection 2023.
To study the existence of subgroups by exploring the similarities between the attributes of the nodes of the groups, in relation to diet and gender and, to analyse the connectivity between groups based on aspects of similarities between them through SNA and artificial intelligence techniques.
235 students from 5 different educational centres participate in this study between March and December 2015. Data analysis carried out is divided into two blocks: social network analysis and unsupervised machine learning techniques. As for the social network analysis, the Girvan-Newman technique was applied to find the best number of cohesive groups within each of the friendship networks of the different classes analysed.
After applying Girvan-Newman in the three classes, the best division into clusters was respectively 2 for classroom A, 7 for classroom B and 6 for classroom C. There are significant differences between the groups and the gender and diet variables. After applying K-means using population diet as an input variable, a K-means clustering of 2 clusters for class A, 3 clusters for class B and 3 clusters for class C is obtained.
Adolescents form subgroups within their classrooms. Subgroup cohesion is defined by the fact that nodes share similarities in aspects that influence obesity, they share attributes related to food quality and gender. The concept of homophily, related to SNA, justifies our results. Artificial intelligence techniques together with the application of the Girvan-Newman provide robustness to the structural analysis of similarities and cohesion between subgroups.
通过探索群组节点属性之间的相似性,研究亚组的存在,涉及饮食和性别,并通过 SNA 和人工智能技术分析基于它们之间相似性的群组之间的连接性。
2015 年 3 月至 12 月期间,来自 5 个不同教育中心的 235 名学生参与了这项研究。进行的数据分析分为两个块:社会网络分析和无监督机器学习技术。对于社会网络分析,应用 Girvan-Newman 技术在分析的不同班级的友谊网络中找到每个最佳的凝聚群组数量。
在对三个班级应用 Girvan-Newman 后,分别为 A 班 2 个、B 班 7 个和 C 班 6 个聚类。各组与性别和饮食变量存在显著差异。在使用人口饮食作为输入变量应用 K-means 后,A 班聚类为 2 个、B 班聚类为 3 个、C 班聚类为 3 个。
青少年在其课堂上形成亚组。亚组凝聚力的定义是节点在影响肥胖的方面具有相似性,它们具有与食物质量和性别相关的属性。与 SNA 相关的同质性概念解释了我们的结果。人工智能技术与 Girvan-Newman 的应用为相似性和凝聚力的结构分析提供了稳健性。