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Empirical Likelihood Based Synthetic Data Method for Censored Regression Analysis
Authors:Ming Zheng  Yunting Sun
Institution:1. Department of Statistics, School of Management , Fudan University , Shanghai , P.R. China;2. Department of Statistics , Stanford University , Stanford , California , USA
Abstract:In this article, we propose a new empirical likelihood method for linear regression analysis with a right censored response variable. The method is based on the synthetic data approach for censored linear regression analysis. A log-empirical likelihood ratio test statistic for the entire regression coefficients vector is developed and we show that it converges to a standard chi-squared distribution. The proposed method can also be used to make inferences about linear combinations of the regression coefficients. Moreover, the proposed empirical likelihood ratio provides a way to combine different normal equations derived from various synthetic response variables. Maximizing this empirical likelihood ratio yields a maximum empirical likelihood estimator which is asymptotically equivalent to the solution of the estimating equation that are optimal linear combination of the original normal equations. It improves the estimation efficiency. The method is illustrated by some Monte Carlo simulation studies as well as a real example.
Keywords:Empirical likelihood  Linear regression models  Optimal linear combination  Right censored data  Synthetic data
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