Hazard Estimation under Generalized Censoring
classification
🧮 math.ST
stat.TH
keywords
censoringestimationestimatorhazardproblemadaptedapplicationsarbitrary
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This paper focuses on the problem of the estimation of the cumulative hazard function of a distribution on a general complete separable metric space when the data points are subject to censoring by an arbitrary adapted random set. A problem involving observability of the estimator proposed in [8] and [9] is resolved and a functional central limit theorem is proven for the revised estimator. Several examples and applications are discussed, and the validity of bootstrap methods is established in each case.
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