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Model Checking for a General Linear Model with Nonignorable Missing Covariates
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作者 Zhi-hua SUN Wai-Cheung IP Heung WONG 《Acta Mathematicae Applicatae Sinica》 SCIE CSCD 2012年第1期99-110,共12页
In this paper, we investigate the model checking problem for a general linear model with nonignorable missing covariates. We show that, without any parametric model assumption for the response probability, the least s... In this paper, we investigate the model checking problem for a general linear model with nonignorable missing covariates. We show that, without any parametric model assumption for the response probability, the least squares method yields consistent estimators for the linear model even if only the complete data are applied. This makes it feasible to propose two testing procedures for the corresponding model checking problem: a score type lack-of-fit test and a test based on the empirical process. The asymptotic properties of the test statistics are investigated. Both tests are shown to have asymptotic power 1 for local alternatives converging to the null at the rate n-r, 0 ≤ r 〈 1/2. Simulation results show that both tests perform satisfactorily. 展开更多
关键词 general linear model model checking nonignorable missing covariates sensitivity analysis
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Variable screening with missing covariates: a discussion of ‘statistical inferencefor nonignorable missing data problems: a selective review’ by NianshengTang and Yuanyuan Ju
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作者 Fang Fang Lyu Ni 《Statistical Theory and Related Fields》 2018年第2期134-136,共3页
Feature screening with missing data is a critical problem but has not been well addressed in theliterature. In this discussion we propose a new screening index based on “information value” andapply it to feature scr... Feature screening with missing data is a critical problem but has not been well addressed in theliterature. In this discussion we propose a new screening index based on “information value” andapply it to feature screening with missing covariates. 展开更多
关键词 Feature screening missing at random missing covariates
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Asymptotic Theory for Relative-Risk Models with Missing Time-Dependent Covariates
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作者 Zai-ying ZHOU Peng-cheng ZHANG Ying YANG 《Acta Mathematicae Applicatae Sinica》 SCIE CSCD 2018年第4期669-692,共24页
Relative-risk models are often used to characterize the relationship between survival time and time-dependent covariates. When the covariates are observed, the estimation and asymptotic theory for parameters of intere... Relative-risk models are often used to characterize the relationship between survival time and time-dependent covariates. When the covariates are observed, the estimation and asymptotic theory for parameters of interest are available; challenges remain when missingness occurs. A popular approach at hand is to jointly model survival data and longitudinal data. This seems efficient, in making use of more information, but the rigorous theoretical studies have long been ignored. For both additive risk models and relative-risk models, we consider the missing data nonignorable. Under general regularity conditions, we prove asymptotic normality for the nonparametric maximum likelihood estimators. 展开更多
关键词 relative-risk model missing time-dependent covariate nonparametric maximum likelihood esti-mation asymptotic normality
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Projection-based Consistent Test for Linear Regression Model with Missing Response and Covariates
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作者 Su-jin ZHENG Si-yu GAO Zhi-hua SUN 《Acta Mathematicae Applicatae Sinica》 SCIE CSCD 2020年第4期917-935,共19页
In recent years,there has been a large amount of literature on missing data.Most of them focus on situations where there is only missingness in response or covariate.In this paper,we consider the adequacy check for th... In recent years,there has been a large amount of literature on missing data.Most of them focus on situations where there is only missingness in response or covariate.In this paper,we consider the adequacy check for the linear regression model with the response and covariates missing simultaneously.We apply model adjustment and inverse probability weighting methods to deal with the missingness of response and covariate,respectively.In order to avoid the curse of dimension,we propose an empirical process test with the linear indicator weighting function.The asymptotic properties of the proposed test under the null,local and global alternative hypothe tical models are rigorously investigated.A consisten t wild boot strap method is developed to approximate the critical value.Finally,simulation studies and real data analysis are performed to show that the proposed method performed well. 展开更多
关键词 CONSISTENCY linear indicator weighting function empirical process missing response and covariates PROJECTION
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