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Nonparametric estimation of the bivariate cdf for arbitrarily censored data
Authors:Robert Gentleman  Alain C Vandal
Abstract:Right, left or interval censored multivariate data can be represented by an intersection graph. Focussing on the bivariate case, the authors relate the structure of such an intersection graph to the support of the nonparametric maximum likelihood estimate (NPMLE) of the cumulative distribution function (CDF) for such data. They distinguish two types of non‐uniqueness of the NPMLE: representational, arising when the likelihood is unaffected by the distribution of the estimated probability mass within regions, and mixture, arising when the masses themselves are not unique. The authors provide a brief overview of estimation techniques and examine three data sets.
Keywords:Censored data  clique graph  interval censoring  maximal cliques  nonparametric likelihood
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