Judgement post-stratification with imprecise rankings.

Biometrics

Department of Statistics, The Ohio State University, Columbus, Ohio 43210-1247, USA.

Published: March 2004

Judgement post-stratification, which is based on ideas similar to those in ranked set sampling, relies on the ability of a ranker to forecast the ranks of potential observations on a set of units. In practice, the authors sometimes find it difficult to assign these ranks. This note shows how one can borrow techniques from the literature on finite population sampling to allow a probabilistic ranking of the units in a set, thus facilitating use of these sampling plans and improving estimation. The same techniques provide one approach to estimation using a judgement post-stratified sample with multiple rankers. The technique is illustrated on allometric data relating brain weight to body weight in different species of mammals, and on a study of student performance in graduate school.

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http://dx.doi.org/10.1111/j.0006-341X.2004.00144.xDOI Listing

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View Article and Find Full Text PDF

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