Publication | Closed Access
The Empirical Distribution Function with Arbitrarily Grouped, Censored and Truncated Data
1.8K
Citations
15
References
1976
Year
EngineeringMathematical StatisticData ScienceMaximum Likelihood EstimateBiostatisticsPublic HealthEstimation TheoryStatisticsTruncated DataDensity EstimationEmpirical Distribution FunctionArbitrarily GroupedEstimation StatisticFunctional Data AnalysisMixture DistributionDistribution Function FStatistical InferenceNon-parametric EstimationSemi-nonparametric Estimation
Summary This paper is concerned with the non-parametric estimation of a distribution function F, when the data are incomplete due to grouping, censoring and/or truncation. Using the idea of self-consistency, a simple algorithm is constructed and shown to converge monotonically to yield a maximum likelihood estimate of F. An application to hypothesis testing is indicated.
| Year | Citations | |
|---|---|---|
Page 1
Page 1