Strong consistency of LS estimators in simple linear EV regression models with WOD errors
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Publication:5028938
DOI10.7153/JMI-2021-15-105zbMath1493.62120OpenAlexW3215493080MaRDI QIDQ5028938
Soo Hak Sung, Yi Yanchun, Ping Yan Chen
Publication date: 11 February 2022
Published in: Journal of Mathematical Inequalities (Search for Journal in Brave)
Full work available at URL: https://doi.org/10.7153/jmi-2021-15-105
strong consistencywidely orthant dependent random variablessimple linear errors-in-variables regression model
Related Items (3)
Sufficient and necessary conditions for the strong consistency of LS estimators in simple linear EV regression models ⋮ Moment convergence rate of estimators in partially linear models under AANA errors ⋮ Strong consistency of least-squares estimators in the simple linear errors-in-variables regression model with widely orthant dependent random variables
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