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Simultaneous Estimation and Variable Selection for Interval-Censored Data With Broken Adaptive Ridge Regression
by
Li, Gang
, Wu, Qiwei
, Zhao, Hui
, Sun, Jianguo
in
Broken adaptive ridge regression
/ Censored data (mathematics)
/ Censorship
/ Collinearity
/ Computer simulation
/ Cox's proportional hazards model
/ Data
/ Estimation
/ Failure times
/ Grouping effect
/ Interval-censored data
/ Property
/ Regression analysis
/ Regularity
/ Regularization
/ Simulation
/ Statistical methods
/ Statistics
/ Theory and Methods
/ Variable selection
2020
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Simultaneous Estimation and Variable Selection for Interval-Censored Data With Broken Adaptive Ridge Regression
by
Li, Gang
, Wu, Qiwei
, Zhao, Hui
, Sun, Jianguo
in
Broken adaptive ridge regression
/ Censored data (mathematics)
/ Censorship
/ Collinearity
/ Computer simulation
/ Cox's proportional hazards model
/ Data
/ Estimation
/ Failure times
/ Grouping effect
/ Interval-censored data
/ Property
/ Regression analysis
/ Regularity
/ Regularization
/ Simulation
/ Statistical methods
/ Statistics
/ Theory and Methods
/ Variable selection
2020
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Simultaneous Estimation and Variable Selection for Interval-Censored Data With Broken Adaptive Ridge Regression
by
Li, Gang
, Wu, Qiwei
, Zhao, Hui
, Sun, Jianguo
in
Broken adaptive ridge regression
/ Censored data (mathematics)
/ Censorship
/ Collinearity
/ Computer simulation
/ Cox's proportional hazards model
/ Data
/ Estimation
/ Failure times
/ Grouping effect
/ Interval-censored data
/ Property
/ Regression analysis
/ Regularity
/ Regularization
/ Simulation
/ Statistical methods
/ Statistics
/ Theory and Methods
/ Variable selection
2020
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Simultaneous Estimation and Variable Selection for Interval-Censored Data With Broken Adaptive Ridge Regression
Journal Article
Simultaneous Estimation and Variable Selection for Interval-Censored Data With Broken Adaptive Ridge Regression
2020
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Overview
The simultaneous estimation and variable selection for Cox model has been discussed by several authors when one observes right-censored failure time data. However, there does not seem to exist an established procedure for interval-censored data, a more general and complex type of failure time data, except two parametric procedures. To address this, we propose a broken adaptive ridge (BAR) regression procedure that combines the strengths of the quadratic regularization and the adaptive weighted bridge shrinkage. In particular, the method allows for the number of covariates to be diverging with the sample size. Under some weak regularity conditions, unlike most of the existing variable selection methods, we establish both the oracle property and the grouping effect of the proposed BAR procedure. An extensive simulation study is conducted and indicates that the proposed approach works well in practical situations and deals with the collinearity problem better than the other oracle-like methods. An application is also provided.
Publisher
Taylor & Francis,Taylor & Francis, Ltd,Taylor & Francis Ltd
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