Adaptive sampling without replacement of clusters |
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Authors: | Arthur L. Dryver Steven K. Thompson |
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Affiliation: | aSchool of Applied Statistics, National Institute of Development Administration, Bangkok 10240, Thailand;bDepartment of Statistics and Actuarial Science, Simon Fraser University, Burnaby, BC V5A 1S6 Canada |
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Abstract: | In a common form of adaptive cluster sampling, an initial sample of units is selected by random sampling without replacement and, whenever the observed value of the unit is sufficiently high, its neighboring units are added to the sample, with the process of adding neighbors repeated if any of the added units are also high valued. In this way, an initial selection of a high-valued unit results in the addition of the entire network of surrounding high-valued units and some low-valued “edge” units where sampling stops. Repeat selections can occur when more than one initially selected unit is in the same network or when an edge unit is shared by more than one added network. Adaptive sampling without replacement of networks avoids some of this repeat selection by sequentially selecting initial sample units only from the part of the population not already in any selected network. The design proposed in this paper carries this step further by selecting initial units only from the population, exclusive of any previously selected networks or edge units. |
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Keywords: | Adaptive sampling Network Cluster |
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