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Original Articles

Stochastic restricted Liu estimator in linear mixed measurement error models

Pages 1220-1233 | Received 10 May 2019, Accepted 03 Sep 2019, Published online: 16 Sep 2019

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Read on this site (2)

Özge Kuran & Seçil Yalaz. (2022) Kernel Liu prediction approach in partially linear mixed measurement error models. Statistics 56:6, pages 1385-1408.
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Fatemeh Ghapani & Babak Babadi. (2022) Diagnostic measures for the restricted Liu estimator in linear measurement error models. Journal of Statistical Computation and Simulation 92:11, pages 2257-2272.
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Articles from other publishers (3)

Sh. Borhani, F. Ghapani & R. Jafaraghaie. (2024) Detecting Influential Observations Using Liu Estimator in Linear Mixed Measurement Error Models. Journal of Statistical Theory and Practice 18:2.
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Nahid Ganjealivand, Fatemeh Ghapani, Ali Zaherzadeh & Farshin Hormozinejad. (2021) Stochastic Restricted Two-Parameter Estimator in Linear Mixed Measurement Error Models. Journal of the Iranian Statistical Society 20:2, pages 79-102.
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Jibo Wu. (2021) The Mixed Liu Estimator in Stochastic Restricted Linear Measurement Error Model. Journal of Mathematics 2021, pages 1-8.
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