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Principal components estimator for measurement error models

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ABSTRACT In this paper, we carry out the principal components regression approach to the measurement error models. We introduce the principal components estimator and then the restricted principal components estimator… Click to show full abstract

ABSTRACT In this paper, we carry out the principal components regression approach to the measurement error models. We introduce the principal components estimator and then the restricted principal components estimator by combining the approaches principal components regression estimator and restricted least squares estimator for the measurement error models, when the reliability matrix known and unknown, separately. We investigate the asymptotic properties and matrix mean squared error performances of the new estimators. Also, we conduct a Monte Carlo simulation study and a numerical example to investigate the performances of the proposed estimators by the scalar mean squared error criterion.

Keywords: error models; error; estimator measurement; components estimator; measurement error; principal components

Journal Title: Journal of Statistical Computation and Simulation
Year Published: 2020

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