The robust estimation method for a finite mixture of Poisson mixed-effect models

When analyzing clustered count data derived from several latent subpopulations, the finite mixture of the Poisson mixed-effect model is an immediate strategy to model the underlying heterogeneity. Within the generalized linear mixed model framework, parameters in such a model are often estimated thr...

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Main Authors: Xiang, Liming, Yau, Kelvin K. W., Lee, Andy H.
Other Authors: School of Physical and Mathematical Sciences
Format: Journal Article
Language:English
Published: 2013
Online Access:https://hdl.handle.net/10356/97019
http://hdl.handle.net/10220/13106
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author Xiang, Liming
Yau, Kelvin K. W.
Lee, Andy H.
author2 School of Physical and Mathematical Sciences
author_facet School of Physical and Mathematical Sciences
Xiang, Liming
Yau, Kelvin K. W.
Lee, Andy H.
author_sort Xiang, Liming
collection NTU
description When analyzing clustered count data derived from several latent subpopulations, the finite mixture of the Poisson mixed-effect model is an immediate strategy to model the underlying heterogeneity. Within the generalized linear mixed model framework, parameters in such a model are often estimated through the residual maximum likelihood estimation approach. However, the method is vulnerable to outliers. To develop robust estimators, the minimum Hellinger distance (MHD) estimation approach has been proposed by Xiang et al. (Xiang, L., Yau, K.K.W., Lee, A.H., Hui, Y.V., 2008. Minimum Hellinger distance estimation for k-component Poisson mixture with random effects. Biometrics 64, 508–518) with the random effects following a normal distribution. In some circumstances, there is little information available on the joint distributional form of the random effects. Without prescribing a parametric form for the random effects distribution, we consider embedding the non-parametric maximum likelihood (NPML) approach within the MHD estimation to extend the robust estimation method for a finite mixture of Poisson mixed-effect models. The NPML estimation not only avoids the problem of numerical integration in deriving the MHD estimating equations, but also enhances the robustness characteristic because of its resistance to possible misspecification of the parametric distribution for the random effects. The performance of the new method is evaluated and compared with that of the existing MHD estimation using simulations. Application to analyze a real data set of recurrent urinary tract infections is illustrated.
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spelling ntu-10356/970192020-03-07T12:37:21Z The robust estimation method for a finite mixture of Poisson mixed-effect models Xiang, Liming Yau, Kelvin K. W. Lee, Andy H. School of Physical and Mathematical Sciences When analyzing clustered count data derived from several latent subpopulations, the finite mixture of the Poisson mixed-effect model is an immediate strategy to model the underlying heterogeneity. Within the generalized linear mixed model framework, parameters in such a model are often estimated through the residual maximum likelihood estimation approach. However, the method is vulnerable to outliers. To develop robust estimators, the minimum Hellinger distance (MHD) estimation approach has been proposed by Xiang et al. (Xiang, L., Yau, K.K.W., Lee, A.H., Hui, Y.V., 2008. Minimum Hellinger distance estimation for k-component Poisson mixture with random effects. Biometrics 64, 508–518) with the random effects following a normal distribution. In some circumstances, there is little information available on the joint distributional form of the random effects. Without prescribing a parametric form for the random effects distribution, we consider embedding the non-parametric maximum likelihood (NPML) approach within the MHD estimation to extend the robust estimation method for a finite mixture of Poisson mixed-effect models. The NPML estimation not only avoids the problem of numerical integration in deriving the MHD estimating equations, but also enhances the robustness characteristic because of its resistance to possible misspecification of the parametric distribution for the random effects. The performance of the new method is evaluated and compared with that of the existing MHD estimation using simulations. Application to analyze a real data set of recurrent urinary tract infections is illustrated. 2013-08-15T06:34:40Z 2019-12-06T19:37:57Z 2013-08-15T06:34:40Z 2019-12-06T19:37:57Z 2012 2012 Journal Article Xiang, L., Yau, K. K.,& Lee, A. H. (2012). The robust estimation method for a finite mixture of Poisson mixed-effect models. Computational Statistics & Data Analysis, 56(6), 1994-2005. https://hdl.handle.net/10356/97019 http://hdl.handle.net/10220/13106 10.1016/j.csda.2011.12.006 en Computational statistics & data analysis
spellingShingle Xiang, Liming
Yau, Kelvin K. W.
Lee, Andy H.
The robust estimation method for a finite mixture of Poisson mixed-effect models
title The robust estimation method for a finite mixture of Poisson mixed-effect models
title_full The robust estimation method for a finite mixture of Poisson mixed-effect models
title_fullStr The robust estimation method for a finite mixture of Poisson mixed-effect models
title_full_unstemmed The robust estimation method for a finite mixture of Poisson mixed-effect models
title_short The robust estimation method for a finite mixture of Poisson mixed-effect models
title_sort robust estimation method for a finite mixture of poisson mixed effect models
url https://hdl.handle.net/10356/97019
http://hdl.handle.net/10220/13106
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