首页> 外文期刊>International Journal of Geographical Information Science >Metrics for characterizing network structure and node importance in Spatial Social Networks
【24h】

Metrics for characterizing network structure and node importance in Spatial Social Networks

机译:用于在空间社交网络中表征网络结构和节点重要性的度量标准

获取原文
获取原文并翻译 | 示例
       

摘要

Social Network Analysis offers powerful tools to analyze the structure of relationships between a set of people. However, the addition of spatial information poses new challenges, as nodes are embedded simultaneously in network space and Euclidean space. While nearby nodes may not form social ties, ties may exist at a distance, a configuration ill-suited for traditional spatial metrics that assume adjacent objects are related. As such, there are relatively few metrics to describe these nuanced situations. We advance the burgeoning field of spatial social network analysis by introducing a set of new metrics. Specifically, we introduce the spatial social network schema, tuning parameter and the flattening ratio, each of which leverages the notion of distance' to augment insights obtained by relying on topology alone. These methods are used to answer the questions: What is the social and spatial structure of the network? Who are the key individuals at different spatial scales? We use two synthetic networks with properties mimicking the ones reported in the literature as validation datasets and a case study of employer-employee network. The methods characterize the employer-employee as spatially loose with predominantly local connections and identify key individuals responsible for keeping the network connected at different spatial scales.
机译:社交网络分析提供了强大的工具,用于分析一组人之间的关系结构。然而,添加空间信息造成了新的挑战,因为节点在网络空间和欧几里德空间中同时嵌入。虽然附近的节点可能无法形成社交领带,但领带可能存在于一定距离中,这是一种对假设相邻对象的传统空间指标的配置不存在。因此,有相对较少的指标来描述这些细致的情况。通过引入一组新指标,我们推进了空间社交网络分析的爆炸领域。具体而言,我们介绍了空间社交网络模式,调整参数和扁平率,每一个都利用距离的概念来增强通过依赖拓扑而获得的洞察。这些方法用于回答问题:网络的社会和空间结构是什么?谁是不同空间尺度的关键人物?我们使用两个具有模拟文献中报告的属性的合成网络作为验证数据集和雇主 - 员工网络的案例研究。这些方法将雇主 - 员工描述为空间上松动,主要是本地连接,并识别负责保持网络以不同的空间尺度连接的关键个人。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号