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Nonparametric maximum likelihood estimation for artificially truncated absence data
Authors:Sally Mcclean Colum Devine
Affiliation:School of Information and Software Engineering, Faculty of Informatics , University of Ulster , Coleraine, BT52 ISA, Northern Ireland Phone: 44 1265 324602 Fax: 44 1265 324602 E-mail: si.mcclean@ulst.ac.ukCromore Road
Abstract:In manpower planning it is cornmoniy tue case tnat employees withuraw from active service for a period of time before returning to take up post at a later date. Such periods of absence are frequently of major concern to employers who are anxious to ensure that employees return as soon as possible. The distribution of duration of such periods of absence are therefore of considerable interest as is the probability that such employees will ever return to active service. In this paper we derive a nonparametric estimator for such a lifetime distribution based on renewal data which are subject to various forms of incompleteness, namely right censoring, left and right truncation, and forward recurrence. Artificial truncation is used to ensure that the data are time homogeneous. A nonparametric maximum likelihood estimator for the lifetime.
Keywords:incomplete data  EM algorithm  manpower planning
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