Please use this identifier to cite or link to this item: http://repositorio.ufla.br/jspui/handle/1/13031
Title: Métodos de estimação de parâmetros em modelo de covariância com erro na covariável
Other Titles: Parameter estimation methods in covariance model with error in covariate
Keywords: Erros de medida
Modelo de covariância
Acurácia
Error in variables
Model of covariance
Accuracy
Issue Date: Oct-2011
Publisher: Universidade Federal de Santa Maria
Citation: OLIVEIRA, T. A. de; MORAIS, A. R. de; CIRILLO, M. A. Métodos de estimação de parâmetros em modelo de covariância com erro na covariável. Ciência Rural, Santa Maria, v. 41, n. 10, p. 1851-1857, out. 2011.
Abstract: The present paper approaches the covariance analysis model with one factor and measurement error in the covariate. Accuracy and precision of two estimators suggested in the literature were evaluated through data simulation, for estimating parameters of a regression model with measurement error. So called Plug-in method estimates the real value based on the observed ones and then uses the common function for estimating the desired parameter. The other estimator, known as bias smoother, only performs a bias correction on the usual estimator by computing a factor. Behavior of both estimators was studied under different residual distributions, goodness of fit and sample sizes. It is worth noting that, in covariance analysis model, the high the sample size, the better for accuracy and precision. Results suggest that the Plug-in estimator presented the best performance both for accuracy and precision under normality, for the distinct evaluated situations. When the estimators had been evaluated in the model of ANCOVA with the residues distributed for Gamma, the same ones had gotten the worse performance in relation when they were evaluated by the others distributions.
URI: http://repositorio.ufla.br/jspui/handle/1/13031
Appears in Collections:DEX - Artigos publicados em periódicos



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