Empirical likelihood method for the multivariate accelerated failure time models |
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Authors: | Ming Zheng Wen Yu |
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Affiliation: | Department of Statistics, School of Management, Fudan University, No. 220, Handanlu, Shanghai 200433, P.R. China |
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Abstract: | In applications, multivariate failure time data appears when each study subject may potentially experience several types of failures or recurrences of a certain phenomenon, or failure times may be clustered. Three types of marginal accelerated failure time models dealing with multiple events data, recurrent events data and clustered events data are considered. We propose a unified empirical likelihood inferential procedure for the three types of models based on rank estimation method. The resulting log-empirical likelihood ratios are shown to possess chi-squared limiting distributions. The properties can be applied to do tests and construct confidence regions without the need to solve the rank estimating equations nor to estimate the limiting variance-covariance matrices. The related computation is easy to implement. The proposed method is illustrated by extensive simulation studies and a real example. |
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Keywords: | Accelerated failure time model Clustered events data Empirical likelihood Likelihood ratio test Multiple events data Rank estimation Recurrent events data Wilks theorem |
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