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Network model-assisted inference from respondent-driven sampling data

机译:基于响应者驱动的采样数据的网络模型辅助推断

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摘要

Respondent-driven sampling is a widely used method for sampling hard-to-reach human populations by link tracing over their social networks. Inference from such data requires specialized techniques because the sampling process is both partially beyond the control of the researcher, and partially implicitly defined. Therefore, it is not generally possible to compute the sampling weights for traditional design-based inference directly, and likelihood inference requires modelling the complex sampling process. As an alternative, we introduce a model-assisted approach, resulting in a design-based estimator leveraging a working network model. We derive a new class of estimators for population means and a corresponding bootstrap standard error estimator. We demonstrate improved performance compared with existing estimators, including adjustment for an initial convenience sample. We also apply the method and an extension to the estimation of the prevalence of human immunodeficiency virus in a high-risk population.
机译:受访者驱动的采样是一种广泛使用的方法,可通过其社交网络上的链接跟踪来采样难以到达的人群。从这样的数据推断需要专门的技术,因为采样过程既部分超出了研究人员的控制范围,又部分地隐含了定义。因此,通常不可能直接为传统的基于设计的推理计算采样权重,而似然推理则需要对复杂的采样过程进行建模。作为替代方案,我们引入了模型辅助方法,从而利用了有效的网络模型,从而实现了基于设计的估计器。我们推导出了一类新的总体均值估计器,以及一个相应的bootstrap标准误差估计器。与现有的估算器相比,我们展示了更高的性能,包括针对初始便利样本的调整。我们还将这种方法及其扩展应用于高危人群中人类免疫缺陷病毒的流行率估算。

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