Asymptotic theorems for estimating the distribution function under random truncation |
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Authors: | Wei-Min Huang Wei-Yann Tsai |
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Affiliation: | (1) Department of Mathematics, Lehigh University, 18015 Bethlehem, PA, U.S.A.;(2) Applied Mathematics Department, Brookhaven National Lab., 11973 Upton, NY, U.S.A. |
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Abstract: | Representation theorem and local asymptotic minimax theorem are derived for nonparametric estimators of the distribution function on the basis of randomly truncated data. The convolution-type representation theorem asserts that the limiting process of any regular estimator of the distribution function is at least as dispersed as the limiting process of the product-limit estimator. The theorems are similar to those results for the complete data case due to Beran (1977, Ann. Statist., 5, 400–404) and for the censored data case due to Wellner (1982, Ann. Statist., 10, 595–602). Both likelihood and functional approaches are considered and the proofs rely on the method of Begun et al. (1983, Ann. Statist., 11, 432–452) with slight modifications.Division of Biostatistics, School of Public Health, Columbia Univ. |
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Keywords: | Nonparametric (conditional and unconditional) maximum likelihood estimator product limit estimator truncated data representation theorem asymptotic minimax |
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