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Dive into the research topics where Weihu Cheng is active.

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Featured researches published by Weihu Cheng.


Journal of Systems Science & Complexity | 2011

Two-step estimators in partial linear models with missing response variables and error-prone covariates

Yiping Yang; Liugen Xue; Weihu Cheng

A partial linear model with missing response variables and error-prone covariates is considered. The imputation approach is developed to estimate the regression coefficients and the nonparametric function. The proposed parametric estimators are shown to be asymptotically normal, and the estimators for the nonparametric part are proved to converge at an optimal rate. To construct confidence regions for the regression coefficients and the nonparametric function, respectively, the authors also propose the empirical-likelihood-based statistics and investigate the limit distributions of the empirical likelihood ratios. The simulation study is conducted to compare the finite sample behavior for the proposed estimators. An application to an AIDS dataset is illustrated.


Communications in Statistics - Simulation and Computation | 2010

Variable Selection for Partially Linear Models with Randomly Censored Data

Yiping Yang; Liugen Xue; Weihu Cheng

This article proposes a variable selection procedure for partially linear models with right-censored data via penalized least squares. We apply the SCAD penalty to select significant variables and estimate unknown parameters simultaneously. The sampling properties for the proposed procedure are investigated. The rate of convergence and the asymptotic normality of the proposed estimators are established. Furthermore, the SCAD-penalized estimators of the nonzero coefficients are shown to have the asymptotic oracle property. In addition, an iterative algorithm is proposed to find the solution of the penalized least squares. Simulation studies are conducted to examine the finite sample performance of the proposed method.


Communications in Statistics-theory and Methods | 2011

The Empirical Likelihood Goodness-of-Fit Test for a Regression Model with Randomly Censored Data

Yiping Yang; Liugen Xue; Weihu Cheng

The regression model with randomly censored data has been intensively investigated. In this article, we consider a goodness-of-fit test for this model. Empirical likelihood (EL) tests are constructed. The asymptotic distributions of the test statistic under null hypothesis and the local alternative hypothesis are given. Simulations are carried out to illustrate the methodology.


Journal of Applied Statistics | 2018

Fitting the generalized Pareto distribution to data based on transformations of order statistics

Haiqing Chen; Weihu Cheng; Yaohua Rong; Xu Zhao

ABSTRACT Generalized Pareto distribution (GPD) has been widely used to model exceedances over thresholds. In this article we propose a new method called weighted nonlinear least squares (WNLS) to estimate the parameters of the GPD. The WNLS estimators always exist and are simple to compute. Some asymptotic results of the proposed method are provided. The simulation results indicate that the proposed method performs well compared to existing methods in terms of mean squared error and bias. Its advantages are further illustrated through the analysis of two real data sets.


Communications in Statistics-theory and Methods | 2018

Parameter estimation for generalized logistic distribution by estimating equations based on the order statistics

Haiqing Chen; Weihu Cheng; Jin Mingzhong

ABSTRACT In this paper, we propose estimating equations estimators (EEE) based on the order statistics for the generalized Logistic distribution. Some asymptotic results are provided. Two simulation studies are undertaken to assess the performance of the proposed method and to compare them with other methods suggested in this paper. The simulation results indicate that EEE performs better than some other methods in terms of MSE. Finally, the proposed method is applied to two real data sets.


Communications in Statistics-theory and Methods | 2018

Comparisons of several Pareto distributions based on record values

Jing Zhao; Weihu Cheng; Haiqing Chen; Mixia Wu

ABSTRACT In order to avoid wrong conclusions in any further analysis, it is of importance to conduct a formal comparison for characteristic quantities of the distributions. These characteristic quantities we are familiar with include mean, quantity and reliability function, and so on. In this paper, we consider two tests aiming at the comparisons for function of parameters in Pareto distribution based on record values. They are generalized p-value-based test and parametric bootstrap-based test, respectively. The resulting procedures are easy to compute and are applicable to small samples. A simulation study is conducted to investigate and compare the performance of the proposed tests. A phenomenon we note is that generalized p-value-based test almost uniformly outperforms the parametric bootstrap-based test.


Communications in Statistics - Simulation and Computation | 2018

Fitting type I generalized Logistic distribution by modified method based on percentiles

Haiqing Chen; Weihu Cheng

ABSTRACT In this paper, we propose a modified estimators based on percentiles (MPCE) to improve the estimators performance based on percentiles for the generalized Logistic distribution. Simulation results indicate that MPCE outperforms other existing methods in terms of MSE. Finally, the proposed method is applied to a real data set.


Communications in Statistics-theory and Methods | 2017

Model selection and model averaging for semiparametric partially linear models with missing data

Jie Zeng; Weihu Cheng; Guozhi Hu; Yaohua Rong

ABSTRACT We study model selection and model averaging in semiparametric partially linear models with missing responses. An imputation method is used to estimate the linear regression coefficients and the nonparametric function. We show that the corresponding estimators of the linear regression coefficients are asymptotically normal. Then a focused information criterion and frequentist model average estimators are proposed and their theoretical properties are established. Simulation studies are performed to demonstrate the superiority of the proposed methods over the existing strategies in terms of mean squared error and coverage probability. Finally, the approach is applied to a real data case.


Communications in Statistics-theory and Methods | 2017

Parameter estimation for three-parameter generalized Pareto distribution by weighted nonlinear least squares

Haiqing Chen; Weihu Cheng; Leilei Zhu; Yaohua Rong

ABSTRACT Generalized Pareto distribution (GPD) is widely used to model exceedances over thresholds. In this paper, we propose a new method, called weighted non linear least squares (WNLS), to estimate the parameters of the three-parameter GPD. Some asymptotic results of the proposed method are provided. An extensive simulation is carried out to evaluate the finite sample behaviour of the proposed method and to compare the behaviour with other methods suggested in the literature. The simulation results show that WNLS outperforms other methods in general situations. Finally, the WNLS is applied to analysis the real-life data.


Communications in Statistics - Simulation and Computation | 2017

Parameter estimation for generalized Pareto distribution by generalized probability weighted moment-equations

Haiqing Chen; Weihu Cheng; Jing Zhao; Xu Zhao

ABSTRACT The generalized Pareto distribution (GPD) has been widely used to model exceedances over a threshold. This article generalizes the method of generalized probability weighted moments, and applies this method to estimate the parameters of GPD. The estimator is computationally easy. Some asymptotic results of this method are provided. Two simulations are carried out to investigate the behavior of this method and to compare them with other methods suggested in the literature. The simulation results show that the performance of the proposed method is better than some other methods. Finally, this method is applied to analyze a real-life data.

Collaboration


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Haiqing Chen

Beijing University of Technology

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Liugen Xue

Beijing University of Technology

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Yiping Yang

Chongqing Technology and Business University

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Yaohua Rong

Beijing University of Technology

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Guozhi Hu

Beijing University of Technology

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Jie Zeng

Beijing University of Technology

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Jing Zhao

Beijing University of Technology

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Xu Zhao

Beijing University of Technology

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Dong Xue

Beijing University of Technology

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Jin Mingzhong

Minzu University of China

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