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NEW SURVEY QUESTIONS AND ESTIMATORS FOR NETWORK CLUSTERING WITH RESPONDENT-DRIVEN SAMPLING DATA

机译:基于响应驱动的采样数据的网络聚类的新调查问题和估计

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摘要

Respondent-driven sampling (RDS) is a popular method for sampling hard-to-survey populations that leverages social network connections through peer recruitment. While RDS is most frequently applied to estimate the prevalence of infections and risk behaviors of interest to public health, such as HIV/AIDS or condom use, it is rarely used to draw inferences about the structural properties of social networks among such populations because it does not typically collect the necessary data. Drawing on recent advances in computer science, we introduce a set of data collection instruments and RDS estimators for network clustering, an important topological property that has been linked to a network’s potential for diffusion of information, disease, and health behaviors. We use simulations to explore how these estimators, originally developed for random walk samples of computer networks, perform when applied to RDS samples with characteristics encountered in realistic field settings that depart from random walks. In particular, we explore the effects of multiple seeds, without replacement versus with replacement, branching chains, imperfect response rates, preferential recruitment, and misreporting of ties. We find that clustering coefficient estimators retain desirable properties in RDS samples. This paper takes an important step toward calculating network characteristics using nontraditional sampling methods, and it expands the potential of RDS to tell researchers more about hidden populations and the social factors driving disease prevalence.
机译:受访者驱动抽样(RDS)是一种用于对难以调查的人群进行抽样的流行方法,该方法通过同级招聘来利用社交网络联系。尽管RDS最常用于估算感染和公共卫生感兴趣的危险行为的流行程度,例如HIV / AIDS或使用安全套,但很少使用RDS来推断此类人群中社交网络的结构特性,因为它确实通常不会收集必要的数据。利用计算机科学的最新进展,我们介绍了用于网络集群的一组数据收集工具和RDS估计器,网络集群是一种重要的拓扑属性,与网络传播信息,疾病和健康行为的潜力有关。我们使用模拟来探索这些最初为计算机网络的随机游走样本开发的估计器在应用于具有在实际野外设置中遇到的特性而不同于随机游走的RDS样本时的性能。特别是,我们探索了多种种子的效果,这些种子不需更换,而无需更换,分支链,不完善的响应率,优先招募和纽带错误报道。我们发现聚类系数估计量在RDS样本中保留了理想的属性。本文朝着使用非传统抽样方法计算网络特征迈出了重要的一步,并扩展了RDS的潜力,以向研究人员提供更多有关隐性种群和驱动疾病流行的社会因素的信息。

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