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Choice between Semi-parametric Estimators of Markov and Non-Markov Multi-state Models from Coarsened Observations
Authors:DANIEL COMMENGES  PIERRE JOLY  ANNE GÉGOUT-PETIT  BENOIT LIQUET
Institution:UnitéINSERM de Biostatistique, UniversitéVictor Segalen Bordeaux 2; Département Science et Modélisation, UniversitéVictor Segalen Bordeaux 2; Laboratoire Statistique et Analyse de données, Universitéde Grenoble
Abstract:Abstract.  We consider models based on multivariate counting processes, including multi-state models. These models are specified semi-parametrically by a set of functions and real parameters. We consider inference for these models based on coarsened observations, focusing on families of smooth estimators such as produced by penalized likelihood. An important issue is the choice of model structure, for instance, the choice between a Markov and some non-Markov models. We define in a general context the expected Kullback–Leibler criterion and we show that the likelihood-based cross-validation (LCV) is a nearly unbiased estimator of it. We give a general form of an approximate of the leave-one-out LCV. The approach is studied by simulations, and it is illustrated by estimating a Markov and two semi-Markov illness–death models with application on dementia using data of a large cohort study.
Keywords:counting processes  cross-validation  dementia  interval-censoring  Kullback–Leibler loss  Markov models  multi-state models  penalized likelihood  semi-Markov models
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