A Short History of Network Sampling

نویسنده

  • Monroe G. Sirken
چکیده

Network sampling and classical survey sampling differ with respect to the counting rule paradigm for linking population elements to the selection units at which they are countable in the survey [20]. Classical survey sampling uses unitary counting rules, such as de jure and de facto residence rules in household surveys, that seek to uniquely link each person to one and only household. Network sampling, on the other hand, seeks to capitalize on duplicate counting of population elements by using multiplicity counting rules, such as friendship and kinship rules in household surveys, that link the same person to multiple households of their friends or relatives.

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تاریخ انتشار 2002