Informatics Cluster, School of Computer Science, University of Petroleum and Energy Studies (UPES), Dehradun 248007, India.
Miracle Educational Society Group of Institutions, ViziaNagaram 535216, Andhra Pradesh, India.
Int J Environ Res Public Health. 2022 Mar 23;19(7):3791. doi: 10.3390/ijerph19073791.
Machine learning techniques facilitate efficient analysis of complex networks, and can be used to discover communities. This study aimed use such approaches to raise awareness of the COVID-19. In this regard, social network analysis describes the clustering and classification processes for detecting communities. The background of this paper analyzed the geographical distribution of Tambaram, Chennai, and its public health care units. This study assessed the spatial distribution and presence of spatiotemporal clustering of public health care units in different geographical settings over four months in the Tambaram zone. To partition a homophily synthetic network of 100 nodes into clusters, an empirical evaluation of two search strategies was conducted for all IDs centrality of linkage is same. First, we analyzed the spatial information between the nodes for segmenting the sparse graph of the groups. Bipartite The structure of the sociograms 1-50 and 51-100 was taken into account while segmentation and divide them is based on the clustering coefficient values. The result of the cohesive block yielded 5.86 density values for cluster two, which received a percentage of 74.2. This research objective indicates that sub-communities have better access to influence, which might be leveraged to appropriately share information with the public could be used in the sharing of information accurately with the public.
机器学习技术有助于高效分析复杂网络,并可用于发现社区。本研究旨在利用这些方法来提高对 COVID-19 的认识。在这方面,社交网络分析描述了用于检测社区的聚类和分类过程。本文的背景分析了钦奈坦巴兰的地理分布及其公共卫生保健单位。本研究评估了在 Tambaram 地区四个月内不同地理环境中公共卫生保健单位的空间分布和时空聚类的存在情况。为了将 100 个节点的同配性综合网络划分为簇,对两种搜索策略进行了实证评估,所有 ID 中心度的链接都是相同的。首先,我们分析了节点之间的空间信息,以分割群组稀疏图。二分图 1-50 和 51-100 的结构被考虑在内,同时分割它们是基于聚类系数值。凝聚块的结果为簇 2 产生了 5.86 的密度值,该值的百分比为 74.2。本研究的目标表明,子社区可以更好地获得影响力,这可以用来与公众分享信息,也可以用来准确地与公众分享信息。