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The Identifiability of Dependent Competing Risks Models Induced by Bivariate Frailty Models
Antai Wang
, Krishnendu Chandra
, Ruihua Xu
, Junfeng Sun
Mathematical Sciences
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Article
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peer-review
6
Scopus citations
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Keyphrases
Bivariate
100%
Dependent Competing Risk Model
100%
Frailty Model
100%
Archimedean Copula Models
66%
Simulation Study
33%
Copula Model
33%
Identifiability Condition
33%
Censored Data
33%
Estimation Method
33%
Expectation-maximization Algorithm
33%
Special Class
33%
Consistent Estimation
33%
Risk Model
33%
Clayton Copula
33%
Heckman
33%
Leukemia Data
33%
Mathematics
Bivariate
100%
Copula
100%
Identifiability
100%
Competing Risk Model
100%
Archimedean
66%
Censored Data
33%
Covariate
33%
Simulation Study
33%
Expectation-Maximization Algorithm
33%
Sufficient Condition
33%