Dhaka University Repository

Marginalized Mixture Models for Zero-In ated Longitudinal Count Data

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dc.contributor.author Haque, Md. Ershadul
dc.date.accessioned 2024-04-25T04:13:22Z
dc.date.available 2024-04-25T04:13:22Z
dc.date.issued 2024-04-25
dc.identifier.uri http://repository.library.du.ac.bd:8080/xmlui/xmlui/handle/123456789/3163
dc.description A Thesis submitted for the Degree of Doctor of Philosophy. en_US
dc.description.abstract In practice, the count data may contain too many structures, which can cause the zero- augmentation issue. If such data are analyzed using standard count models, the results can be misleading. Traditionally, zero-in ated data are analyzed using a statistical model assuming that data arise from a standard count as well as a degenerated populations. Since zero-truncated count models provide similar results obtained from traditional zero-in ated count models, in this study, we have proposed a marginalized statistical model based on mix- ture of two-component Poisson distributions for analyzing zero-in ated longitudinal count data (clustered and repeated measures data) to draw inference regarding the e ects of the covariates on marginal mean (marginalization over Poisson components) of the count re- sponse. To analyze the zero-in ated clustered data, our proposed marginalized Poisson-Poisson (REMPois-Pois) mixture model takes into account the intra-cluster correlation by incorpo- rating random e ects into the models for marginal mean and component-1 mean in the exist- ing marginalized Poisson-Poisson (MPois-Pois) mixture model suggested for cross-sectional setup. The parameters of the REMPois-Pois model were estimated using maximum like- lihood (ML) technique. The Gauss{Hermite quadrature (GHQ) technique was employed to approximate the integrals appeared in the likelihood function. The performance of the proposed marginalized model were assessed through extensive simulation studies. It was ob- served that the proposed model performs well under di erent scenarios of simulation setups. Finally, the proposed REMPois-Pois model was illustrated by using a nationally represen-tative data set on the number of antenatal care (ANC) visits extracted from Bangladesh Demographic and Health Survey (BDHS), 2014. To analyze zero-in ated longitudinal repeated measures count data, a marginalized mix- ture of two-component longitudinal Poisson models (RMMPois-Pois model) have also been proposed in this study. Since observations obtained from the same subject are likely to be correlated in such instance, the regression parameters of the model were estimated by gener- alized quasilikelihood (GQL) approach taking true correlation into account. To examine the performance of the RMMPois-Pois model, we have conducted extensive simulation studies. The results of the simulation studies indicate that the performance of the proposed model is remarkable. To illustrate the RMMPois-Pois model, a real life repeated count data set on the number of episodes for certain side effect acquired from a pharmaceutical company was utilized. en_US
dc.language.iso en en_US
dc.publisher ©University of Dhaka en_US
dc.title Marginalized Mixture Models for Zero-In ated Longitudinal Count Data en_US
dc.type Thesis en_US


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