Publication | Closed Access
A Class of Latent Marginal Models for Capture–Recapture Data With Continuous Covariates
48
Citations
36
References
2006
Year
Maximum Likelihood EstimationComputational EpidemiologyInfectious Disease ModellingLatent ModelingBiostatisticsBayesian MethodsPublic HealthStatistical ModelingStatisticsGeneral EpidemiologyCapture–recapture DataLatent Variable MethodsEm AlgorithmInfectious Disease EpidemiologyLatent Variable ModelContinuous CovariatesMarginal Structural ModelsEpidemiologyBayesian StatisticsNew FamilyLatent Marginal ModelsTime-varying ConfoundingStatistical InferenceMedicineMultivariate Analysis
We introduce a new family of latent class models for the analysis of capture–recapture data where continuous covariates are available. The present approach exploits recent advances in marginal parameterizations to model simultaneously, and conditionally on individual covariates, the size of the latent classes, the marginal probabilities of being captured by each list given the latent, and possible higher-order marginal interactions among lists conditionally on the latent. An EM algorithm for maximum likelihood estimation is described, and an expression for the expected information matrix is derived. In addition, a new method for computing confidence intervals for the size of the population having given covariate configurations is proposed and its asymptotic properties are derived. Applications to data on patients with human immunodeficiency virus, in the region of Veneto, Italy, and to new cases of cancer in Tuscany are discussed.
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