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DTSTART:20150101T000000
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DTSTART;TZID=UTC:20151020T120000
DTEND;TZID=UTC:20151020T130000
DTSTAMP:20210928T102821
CREATED:20160316T231617Z
LAST-MODIFIED:20160316T231617Z
UID:16658-1445342400-1445346000@midas.umich.edu
SUMMARY:Snowball sampling; a critical threshold for design effects
DESCRIPTION:Abstract: Web crawling\, snowball sampling\, and respondent-driven sampling (RDS) are two types of network driven sampling techniques that are popular when it is difficult to contact individuals in the population of interest. This talk studies network driven sampling as a Markov process on the social network that is indexed by a tree. Each node in this tree corresponds to an observation and each edge in the tree corresponds to a referral. Indexing with a tree\, instead of a chain\, allows for the sampled units to refer multiple future units into the sample. In survey sampling\, the design effect characterizes the additional variance induced by a novel sampling strategy. If the design effect is D\, then constructing an estimator from the novel design makes the variance of the estimator D times greater than it would be under a simple random sample. Under certain assumptions on the referral tree\, the design effect of network driven sampling has a critical threshold that is a function of the referral rate m and the clustering structure in the social network\, represented by the second eigenvalue of the Markov transition matrix lambda_2. If m < 1/lambda_2^2\, then the design effect is finite (i.e. the standard estimator is sqrt{n}-consistent). However\, if m > 1/lambda_2^2\, then the design effect grows with n (i.e. the standard estimator is no longer sqrt{n}-consistent; it converges at the slower rate of log_m lambda_2). Karl Rohe\, Ph.D. Assistant Professor University of Wisconsin\, Madison Joint Department of Statistics/Complex Systems Seminar \n
URL:https://midas.umich.edu/event/snowball-sampling-a-critical-threshold-for-design-effects-2/
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