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Articles

Correlation curve estimation for multiplicative distortion measurement errors data

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Pages 435-450 | Received 16 Jul 2018, Accepted 05 Feb 2019, Published online: 18 Feb 2019

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Read on this site (11)

Yujie Gai, Jun Zhang & Yue Zhou. (2023) Parametric hypothesis tests for exponentiality under multiplicative distortion measurement errors data. Communications in Statistics - Simulation and Computation 0:0, pages 1-24.
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Jun Zhang & Zhenghui Feng. (2023) A parametric hypothesis test for a global power law and local nonparametric trend model with multiplicative distortion measurement errors. Communications in Statistics - Simulation and Computation 0:0, pages 1-18.
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Huili Zhou & Jun Zhang. (2022) General least product relative error estimation for multiplicative regression models with or without multiplicative distortion measurement errors. Communications in Statistics - Simulation and Computation 51:11, pages 6352-6370.
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Jun Zhang. (2022) Nonparametric multiplicative distortion measurement errors models with bias reduction. Communications in Statistics - Simulation and Computation 0:0, pages 1-21.
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Jun Zhang, Yujie Gai & Feng Li. (2022) Testing symmetry for additive distortion measurement errors data. Communications in Statistics - Simulation and Computation 51:3, pages 1046-1065.
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Jun Zhang, Baojun Yang & Zhenghui Feng. (2021) Estimation of correlation coefficient under a linear multiplicative distortion measurement errors model. Communications in Statistics - Simulation and Computation 0:0, pages 1-32.
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Zhenghui Feng, Jun Zhang & Baojun Yang. (2021) Average derivation estimation with multiplicative distortion measurement errors. Communications in Statistics - Simulation and Computation 0:0, pages 1-32.
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Jun Zhang & Xia Cui. (2021) Logarithmic calibration for nonparametric multiplicative distortion measurement errors models. Journal of Statistical Computation and Simulation 91:13, pages 2623-2644.
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Jun Zhang, Yiping Yang, Sanying Feng & Zhenghong Wei. (2020) Logarithmic calibration for partial linear models with multiplicative distortion measurement errors. Journal of Statistical Computation and Simulation 90:10, pages 1875-1896.
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Jun Zhang, Wangli Xu & Yujie Gai. (2020) Multiplicative distortion measurement errors linear models with general moment identifiability condition. Journal of Statistical Computation and Simulation 90:2, pages 291-305.
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Yujie Gai, Jun Zhang & Yiping Yang. Non parametric regression models with additive distortions. Communications in Statistics - Theory and Methods 0:0, pages 1-22.
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Articles from other publishers (3)

Jun Zhang, Bingqing Lin & Yan Zhou. (2023) Linear regression models with multiplicative distortions under new identifiability conditions. Statistica Neerlandica 78:1, pages 25-67.
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Jun Zhang, Gaorong Li & Yiping Yang. (2021) Modal linear regression models with multiplicative distortion measurement errors. Statistical Analysis and Data Mining: The ASA Data Science Journal 15:1, pages 15-42.
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Jun Zhang & Yan Zhou. (2020) Calibration procedures for linear regression models with multiplicative distortion measurement errors. Brazilian Journal of Probability and Statistics 34:3.
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