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Statistics / Statistical inference / Estimation theory / Statistical models / Signal processing / Censoring / Survival analysis / Nonparametric statistics / Mixture model / Bootstrapping / Likelihood function
Date: 2013-08-23 12:37:44
Statistics
Statistical inference
Estimation theory
Statistical models
Signal processing
Censoring
Survival analysis
Nonparametric statistics
Mixture model
Bootstrapping
Likelihood function

Non-parametric estimation of the survivor function for misclassified failure time data Andrew Titman Lancaster University 27 August 2013

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