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Statistica Sinica 35 (2025), 2283-2303

A LINEAR ERRORS-IN-VARIABLES
MODEL WITH UNKNOWN
HETEROSCEDASTIC MEASUREMENT ERRORS

Linh H. Nghiem*1 and Cornelis J. Potgieter2,3

1University of Sydney, 2Texas Christian University
and 3University of Johannesburg

Abstract: In the classic measurement error framework, covariates are contaminated by independent additive noise. This paper considers parameter estimation in such a linear errors-in-variables model where the unknown measurement error distribution is heteroscedastic across observations. We propose a new generalized method of moment (GMM) estimator that combines a moment correction approach and a phase function-based approach. The former requires distributions to have four finite moments, while the latter relies on covariates having asymmetric distributions. The new estimator is shown to be consistent and asymptotically normal under appropriate regularity conditions. The asymptotic covariance of the estimator is derived, and the estimated standard error is computed using a fast bootstrap procedure. The GMM estimator is demonstrated to have strong finite sample performance in numerical studies, especially when the measurement errors follow non-Gaussian distributions.

Key words and phrases: Asymmetric distributions, bootstrap, generalized method of moments, nutrition, phase function, variance heterogeneity.

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