
arXiv: 0709.0871
This paper deals simultaneously with linear structural and functional error-in-variables models (SEIVM and FEIVM), revisiting in this context generalized and modified least squares estimators of the slope and intercept, and some methods of moments estimators of unknown variances of the measurement errors. New joint central limit theorems (CLT's) are established for these estimators in the SEIVM and FEIVM under some first time, so far the most general, respective conditions on the explanatory variables, and under the existence of four moments of the measurement errors. Moreover, due to them being in Studentized forms to begin with, the obtained CLT's are a priori nearly, or completely, data-based, and free of unknown parameters of the distribution of the errors and any parameters associated with the explanatory variables. In contrast, in related CLT's in the literature so far, the covariance matrices of the limiting normal distributions are, in general, complicated and depend on various, typically unknown parameters that are hard to estimate. In addition, the very forms of the CLT's in the present paper are universal for the SEIVM and FEIVM. This extends a previously known interplay between a SEIVM and a FEIVM. Moreover, though the particular methods and details of the proofs of the CLT's in the SEIVM and FEIVM that are established in this paper are quite different, a unified general scheme of these proofs is constructed for the two models herewith.
Published at http://dx.doi.org/10.1214/07-EJS075 in the Electronic Journal of Statistics (http://www.i-journals.org/ejs/) by the Institute of Mathematical Statistics (http://www.imstat.org)
positive definite matrix, linear structural/functional error-in-variables model, slowly varying function, identifiability assumptions, full random vector, central limit theorem, Mathematics - Statistics Theory, Statistics Theory (math.ST), domain of attraction of the normal law, multivariate Student statistic, generalized domain of attraction of the multivariate normal law, spherically symmetric random vector, generalized/modified least squares estimator, explanatory variables, Lindeberg’s condition, 60E07, 60F05, FOS: Mathematics, 62J99, Cholesky square root of a matrix, symmetric positive definite square root of a matrix, measurement errors, 60F05, 62J99 (Primary) 60E07 (Secondary)
positive definite matrix, linear structural/functional error-in-variables model, slowly varying function, identifiability assumptions, full random vector, central limit theorem, Mathematics - Statistics Theory, Statistics Theory (math.ST), domain of attraction of the normal law, multivariate Student statistic, generalized domain of attraction of the multivariate normal law, spherically symmetric random vector, generalized/modified least squares estimator, explanatory variables, Lindeberg’s condition, 60E07, 60F05, FOS: Mathematics, 62J99, Cholesky square root of a matrix, symmetric positive definite square root of a matrix, measurement errors, 60F05, 62J99 (Primary) 60E07 (Secondary)
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