Bayesian Analysis of Finite Populations under Simple Random Sampling

Statistical methods to produce inferences based on samples from finite populations have been available for at least 70 years. Topics such as <i>Survey Sampling</i> and <i>Sampling Theory</i> have become part of the mainstream of the statistical methodology. A wide variety of...

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Bibliographic Details
Main Authors: Manuel Mendoza, Alberto Contreras-Cristán, Eduardo Gutiérrez-Peña
Format: Article
Language:English
Published: MDPI AG 2021-03-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/23/3/318
Description
Summary:Statistical methods to produce inferences based on samples from finite populations have been available for at least 70 years. Topics such as <i>Survey Sampling</i> and <i>Sampling Theory</i> have become part of the mainstream of the statistical methodology. A wide variety of sampling schemes as well as estimators are now part of the statistical folklore. On the other hand, while the Bayesian approach is now a well-established paradigm with implications in almost every field of the statistical arena, there does not seem to exist a conventional procedure—able to deal with both continuous and discrete variables—that can be used as a kind of default for Bayesian survey sampling, even in the simple random sampling case. In this paper, the Bayesian analysis of samples from finite populations is discussed, its relationship with the notion of superpopulation is reviewed, and a nonparametric approach is proposed. Our proposal can produce inferences for population quantiles and similar quantities of interest in the same way as for population means and totals. Moreover, it can provide results relatively quickly, which may prove crucial in certain contexts such as the analysis of quick counts in electoral settings.
ISSN:1099-4300