Central limit theorems for LS estimators in the EV regression model with dependent measurements |
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Authors: | Yu Miao Fangfang Zhao Ke Wang |
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Affiliation: | aCollege of Mathematics and Information Science, Henan Normal University, Henan Province, 453007, China |
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Abstract: | In this paper, we consider the simple linear errors-in-variables (EV) regression models: ηi=θ+βxi+εi,ξi=xi+δi,1≤i≤n, where θ,β,x1,x2,… are unknown constants (parameters), (ε1,δ1),(ε2,δ2),… are errors and ξi,ηi,i=1,2,… are observable. The asymptotic normality for the least square (LS) estimators of the unknown parameters β and θ in the model are established under the assumptions that the errors are m-dependent, martingale differences, ?-mixing, ρ-mixing and α-mixing. |
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Keywords: | AMS 2000 subject classifications: 62F12 60F05 |
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