论文标题

网络采样的新估计

New estimates for network sampling

论文作者

Thompson, Steve

论文摘要

网络采样用于世界各地的脆弱,难以触及的人群的调查,包括有艾滋病毒,阿片类药物滥用和新兴流行病的人。抽样方法包括追踪社交链接,以将新朋友添加到样本中。这些调查的当前估计值不准确,偏见很大,平方错误和不可靠的置信区间。这里引入了新的估计器,该估计器几乎消除了所有偏见,均值误差要低得多,并且能够具有良好特性的置信区间。通过避免使用样本网络数据的拓扑以及实际使用的采样设计,避免对人口网络和设计的不切实际的假设来实现改进。在使用高危人群的真实网络的模拟中,新的估计值几乎消除了所有偏见,并且平均轨道的平方错误是当前估计量低2到92倍。新的估计器具有各种网络设计,包括具有严格限制的分支的网络设计,例如受访者驱动的采样和自由分支设计,例如雪球采样。

Network sampling is used around the world for surveys of vulnerable, hard-to-reach populations including people at risk for HIV, opioid misuse, and emerging epidemics. The sampling methods include tracing social links to add new people to the sample. Current estimates from these surveys are inaccurate, with large biases and mean squared errors and unreliable confidence intervals. New estimators are introduced here which eliminate almost all of the bias, have much lower mean squared error, and enable confidence intervals with good properties. The improvement is attained by avoiding unrealistic assumptions about the population network and the design, instead using the topology of the sample network data together with the sampling design actually used. In simulations using the real network of an at-risk population, the new estimates eliminate almost all the bias and have mean squared-errors that are 2 to 92 times lower than those of current estimators. The new estimators are effective with a wide variety of network designs including those with strongly restricted branching such as Respondent-Driven Sampling and freely branching designs such as Snowball Sampling.

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