Bayes, buttressed by design-based ideas, is the best overarching paradigm for sample survey inference

Articles and reports: 12-001-X202200200001

Description:

Conceptual arguments and examples are presented suggesting that the Bayesian approach to survey inference can address the many and varied challenges of survey analysis. Bayesian models that incorporate features of the complex design can yield inferences that are relevant for the specific data set obtained, but also have good repeated-sampling properties. Examples focus on the role of auxiliary variables and sampling weights, and methods for handling nonresponse. The article offers ten top reasons for favoring the Bayesian approach to survey inference.

Issue Number: 2022002
Volume: 48
Author(s): Little, Roderick J.

Main Product: Survey Methodology

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HTMLDecember 15, 2022
PDFDecember 15, 2022