Small area estimation often suffers from imprecise direct estimators due to small sample sizes. One method for giving direct estimators more strength is to use models.‎ Models ‎employ area effects and ‎include supplementary information from extra sources as covariates to increase the accuracy of direct estimators. ‎The valid covariates are the basis of ‎the ‎small ‎area ‎estimation.‎ Therefore, measurement error (ME) in covariates can produce contradictory results, i.e., even reduce the precision of direct estimators. The Gaussian distribution with known variance is generally apply as a distribution of ME. ‏‎ ‎However‎, ‎in real problem, ‎‎there might be situations in which the normality assumption fo MEs does not hold‎. In addition, the assumption of known ME variance is restricted. To address these issues and obtain a more robust model, ‎‎we propose modeling ME using a t-distribution with known and unknown degrees of freedom. Model parameters are estimated using a fully Bayesian framework based on MCMC methods. We validate our proposed model using simulated data and apply it to well-known crop data and the cost and income of households living in Kurdistan province of ‎Iran.‎

Using t-distribution for robust‎ hierarchical Bayesian small area estimation under measurement error in covariates

Serena, Arima;
2023-01-01

Abstract

Small area estimation often suffers from imprecise direct estimators due to small sample sizes. One method for giving direct estimators more strength is to use models.‎ Models ‎employ area effects and ‎include supplementary information from extra sources as covariates to increase the accuracy of direct estimators. ‎The valid covariates are the basis of ‎the ‎small ‎area ‎estimation.‎ Therefore, measurement error (ME) in covariates can produce contradictory results, i.e., even reduce the precision of direct estimators. The Gaussian distribution with known variance is generally apply as a distribution of ME. ‏‎ ‎However‎, ‎in real problem, ‎‎there might be situations in which the normality assumption fo MEs does not hold‎. In addition, the assumption of known ME variance is restricted. To address these issues and obtain a more robust model, ‎‎we propose modeling ME using a t-distribution with known and unknown degrees of freedom. Model parameters are estimated using a fully Bayesian framework based on MCMC methods. We validate our proposed model using simulated data and apply it to well-known crop data and the cost and income of households living in Kurdistan province of ‎Iran.‎
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11587/514127
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