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Improving the Network Scale-Up Estimator: Incorporating Means of Sums, Recursive Back Estimation, and Sampling Weights

机译:改进网络放大估计器:包括求和,递归反向估计和抽样权重的均值

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摘要

Researchers interested in studying populations that are difficult to reach through traditional survey methods can now draw on a range of methods to access these populations. Yet many of these methods are more expensive and difficult to implement than studies using conventional sampling frames and trusted sampling methods. The network scale-up method (NSUM) provides a middle ground for researchers who wish to estimate the size of a hidden population, but lack the resources to conduct a more specialized hidden population study. Through this method it is possible to generate population estimates for a wide variety of groups that are perhaps unwilling to self-identify as such (for example, users of illegal drugs or other stigmatized populations) via traditional survey tools such as telephone or mail surveys—by asking a representative sample to estimate the number of people they know who are members of such a “hidden” subpopulation. The original estimator is formulated to minimize the weight a single scaling variable can exert upon the estimates. We argue that this introduces hidden and difficult to predict biases, and instead propose a series of methodological advances on the traditional scale-up estimation procedure, including a new estimator. Additionally, we formalize the incorporation of sample weights into the network scale-up estimation process, and propose a recursive process of back estimation “trimming” to identify and remove poorly performing predictors from the estimation process. To demonstrate these suggestions we use data from a network scale-up mail survey conducted in Nebraska during 2014. We find that using the new estimator and recursive trimming process provides more accurate estimates, especially when used in conjunction with sampling weights.
机译:对研究难以通过传统调查方法获得的人群感兴趣的研究人员现在可以利用多种方法来访问这些人群。然而,与使用常规采样框架和可信采样方法进行的研究相比,这些方法中的许多方法更加昂贵且难以实施。网络扩展方法(NSUM)为希望估算隐藏人口规模但缺乏进行更专业的隐藏人口研究的资源的研究人员提供了中间立场。通过这种方法,可以通过电话或邮件调查等传统调查工具,为可能不愿自我识别的各种群体(例如,非法毒品使用者或其他受污名化的人群)生成人口估计值,通过要求代表性样本来估计他们认识的属于这种“隐藏”亚人群的人数。制定原始估算器的目的是使单个缩放变量可以对估算值施加的权重最小。我们认为,这引入了隐性和难以预测的偏差,而是在传统的按比例放大估算程序上提出了一系列方法上的改进,包括新的估算器。此外,我们正式将样本权重合并到网络放大估计过程中,并提出了反向估计“修剪”的递归过程,以从估计过程中识别并去除效果不佳的预测变量。为了证明这些建议,我们使用了2014年在内布拉斯加州进行的网络扩展邮件调查中的数据。我们发现,使用新的估计器和递归修剪过程可以提供更准确的估计,尤其是与采样权重结合使用时。

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