Adaptive sampling in behavioral surveys.

S. Thompson
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引用次数: 77

Abstract

Studies of populations such as drug users encounter difficulties because the members of the populations are rare, hidden, or hard to reach. Conventionally designed large-scale surveys detect relatively few members of the populations so that estimates of population characteristics have high uncertainty. Ethnographic studies, on the other hand, reach suitable numbers of individuals only through the use of link-tracing, chain referral, or snowball sampling procedures that often leave the investigators unable to make inferences from their sample to the hidden population as a whole. In adaptive sampling, the procedure for selecting people or other units to be in the sample depends on variables of interest observed during the survey, so the design adapts to the population as encountered. For example, when self-reported drug use is found among members of the sample, sampling effort may be increased in nearby areas. Types of adaptive sampling designs include ordinary sequential sampling, adaptive allocation in stratified sampling, adaptive cluster sampling, and optimal model-based designs. Graph sampling refers to situations with nodes (for example, people) connected by edges (such as social links or geographic proximity). An initial sample of nodes or edges is selected and edges are subsequently followed to bring other nodes into the sample. Graph sampling designs include network sampling, snowball sampling, link-tracing, chain referral, and adaptive cluster sampling. A graph sampling design is adaptive if the decision to include linked nodes depends on variables of interest observed on nodes already in the sample. Adjustment methods for nonsampling errors such as imperfect detection of drug users in the sample apply to adaptive as well as conventional designs.
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行为调查中的适应性抽样。
对吸毒者等人群的研究遇到了困难,因为这些人群的成员是罕见的、隐藏的或难以接触到的。传统设计的大规模调查只检测到相对较少的群体成员,因此对群体特征的估计具有很高的不确定性。另一方面,民族志研究只能通过使用链接追踪、连锁推荐或滚雪球抽样程序来达到适当数量的个体,这往往使调查人员无法从他们的样本中推断出隐藏的整体人口。在自适应抽样中,在样本中选择人或其他单位的程序取决于在调查期间观察到的感兴趣的变量,因此设计适应所遇到的总体。例如,当在样本成员中发现自我报告的吸毒情况时,可能会增加附近区域的抽样努力。自适应抽样设计的类型包括普通顺序抽样、分层抽样中的自适应分配、自适应聚类抽样和基于最优模型的设计。图采样指的是节点(例如人)通过边(例如社会联系或地理邻近)连接的情况。选择节点或边的初始样本,然后沿着边将其他节点带入样本。图采样设计包括网络采样、雪球采样、链接跟踪、链引用和自适应聚类采样。如果包含链接节点的决定取决于在样本中已经存在的节点上观察到的感兴趣的变量,则图采样设计是自适应的。非抽样误差的调整方法,如样本中药物使用者的不完全检测,适用于自适应设计和传统设计。
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