Improved conditional imputation for linear regression with a randomly censored predictor

Volume: 28, Issue: 2, Pages: 432 - 444
Published: Aug 22, 2017
Abstract
This article describes a nonparametric conditional imputation analytic method for randomly censored covariates in linear regression. While some existing methods make assumptions about the distribution of covariates or underestimate standard error due to lack of imputation error, the proposed approach is distribution-free and utilizes resampling to correct for variance underestimation. The performance of the novel method is assessed using...
Paper Details
Title
Improved conditional imputation for linear regression with a randomly censored predictor
Published Date
Aug 22, 2017
Volume
28
Issue
2
Pages
432 - 444
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