On approximate likelihood inference in the poisson mixed model

Thesis (M.Sc.)--Memorial University of Newfoundland, 1995. Mathematics and Statistics Bibliography: leaves 73-77. The application of the Poisson mixed model has been hampered by the difficulty of computation in evaluating the marginal likelihood of the parameters involved. Many approximate approache...

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Main Author: Qu, Zhende, 1964-
Other Authors: Memorial University of Newfoundland. Dept. of Mathematics and Statistics
Format: Thesis
Language:English
Published: 1995
Subjects:
Online Access:http://collections.mun.ca/cdm/ref/collection/theses2/id/224958
id ftmemorialunivdc:oai:collections.mun.ca:theses2/224958
record_format openpolar
institution Open Polar
collection Memorial University of Newfoundland: Digital Archives Initiative (DAI)
op_collection_id ftmemorialunivdc
language English
topic Poisson distribution
Estimation theory
spellingShingle Poisson distribution
Estimation theory
Qu, Zhende, 1964-
On approximate likelihood inference in the poisson mixed model
topic_facet Poisson distribution
Estimation theory
description Thesis (M.Sc.)--Memorial University of Newfoundland, 1995. Mathematics and Statistics Bibliography: leaves 73-77. The application of the Poisson mixed model has been hampered by the difficulty of computation in evaluating the marginal likelihood of the parameters involved. Many approximate approaches have recently been proposed for inference about the generalized linear mixed model which refers to the Poisson mixed model as a special case, for example, the penalized quasi-likelihood (PQL) approach of Breslow and Clayton (1993), and the generalized estimating function (GEF) approach of Waclawiw and Liang (1993). We show in the thesis that both the PQL and GEF produce inconsistent inference for the variance component in the Poisson mixed model. The thesis then proposes a two-step approximate likelihood approach (AL) for the estimation of three types of parameters (fixed effect parameters, random effects and their variance component) in the Poisson mixed model. In the first step, an approximate likelihood function of count data is constructed to estimate the fixed effect parameters and the variance component by applying a conjugate Bayesian theorem. In the second step, the random effects are estimated by minimizing their approximate posterior mean square error. Our estimates are always consistent for both the fixed effect parameters and the variance component. When the actual variance component is near zero, our estimates are almost efficient for both the fixed effect parameters and the variance component, and are almost optimal for the random effects. When the actual variance component is away from zero, our estimates are always asymptotically unbiased for the fixed effect parameters, whereas our estimate is asymptotically negative biased for the variance component. Another desirable merit is that, unlike the existing approaches mentioned above, our estimates for both the fixed effect parameters and the variance component only depend on the distribution of random effects rather than the estimates of random effects. An important finding is that the asymptotic covariance of our estimates for the fixed effect parameters will become smaller in general as the variance component, an index of the intra-cluster association, increases, and can be noticeably reduced by assigning the values of the fixed effect covariates as different as possible among different observations in any cluster. However, if the fixed effect covariate has the same or almost equal values among different observations in any cluster, the asymptotic variance of the estimate for the corresponding fixed effect parameter may increase as the variance component gets larger. This feature may be useful in designing a valid experiment or sampling for the Poisson mixed model. Unless the variance component is small, the fixed effect covariates should be designed to have values as different as possible among different observations in any cluster. It is further shown, through simulation, the proposed approach performs better than the PQL and GEF approaches.
author2 Memorial University of Newfoundland. Dept. of Mathematics and Statistics
format Thesis
author Qu, Zhende, 1964-
author_facet Qu, Zhende, 1964-
author_sort Qu, Zhende, 1964-
title On approximate likelihood inference in the poisson mixed model
title_short On approximate likelihood inference in the poisson mixed model
title_full On approximate likelihood inference in the poisson mixed model
title_fullStr On approximate likelihood inference in the poisson mixed model
title_full_unstemmed On approximate likelihood inference in the poisson mixed model
title_sort on approximate likelihood inference in the poisson mixed model
publishDate 1995
url http://collections.mun.ca/cdm/ref/collection/theses2/id/224958
long_lat ENVELOPE(-64.183,-64.183,-65.167,-65.167)
geographic Clayton
geographic_facet Clayton
genre Newfoundland studies
University of Newfoundland
genre_facet Newfoundland studies
University of Newfoundland
op_source Paper copy kept in the Centre for Newfoundland Studies, Memorial University Libraries
op_relation Electronic Theses and Dissertations
(8.10 MB) -- http://collections.mun.ca/PDFs/theses/Qu-Zhende.pdf
76245856
http://collections.mun.ca/cdm/ref/collection/theses2/id/224958
op_rights The author retains copyright ownership and moral rights in this thesis. Neither the thesis nor substantial extracts from it may be printed or otherwise reproduced without the author's permission.
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spelling ftmemorialunivdc:oai:collections.mun.ca:theses2/224958 2023-05-15T17:23:34+02:00 On approximate likelihood inference in the poisson mixed model Qu, Zhende, 1964- Memorial University of Newfoundland. Dept. of Mathematics and Statistics 1995 iv, iv, 77 leaves : ill. Image/jpeg; Application/pdf http://collections.mun.ca/cdm/ref/collection/theses2/id/224958 Eng eng Electronic Theses and Dissertations (8.10 MB) -- http://collections.mun.ca/PDFs/theses/Qu-Zhende.pdf 76245856 http://collections.mun.ca/cdm/ref/collection/theses2/id/224958 The author retains copyright ownership and moral rights in this thesis. Neither the thesis nor substantial extracts from it may be printed or otherwise reproduced without the author's permission. Paper copy kept in the Centre for Newfoundland Studies, Memorial University Libraries Poisson distribution Estimation theory Text Electronic thesis or dissertation 1995 ftmemorialunivdc 2015-08-06T19:17:26Z Thesis (M.Sc.)--Memorial University of Newfoundland, 1995. Mathematics and Statistics Bibliography: leaves 73-77. The application of the Poisson mixed model has been hampered by the difficulty of computation in evaluating the marginal likelihood of the parameters involved. Many approximate approaches have recently been proposed for inference about the generalized linear mixed model which refers to the Poisson mixed model as a special case, for example, the penalized quasi-likelihood (PQL) approach of Breslow and Clayton (1993), and the generalized estimating function (GEF) approach of Waclawiw and Liang (1993). We show in the thesis that both the PQL and GEF produce inconsistent inference for the variance component in the Poisson mixed model. The thesis then proposes a two-step approximate likelihood approach (AL) for the estimation of three types of parameters (fixed effect parameters, random effects and their variance component) in the Poisson mixed model. In the first step, an approximate likelihood function of count data is constructed to estimate the fixed effect parameters and the variance component by applying a conjugate Bayesian theorem. In the second step, the random effects are estimated by minimizing their approximate posterior mean square error. Our estimates are always consistent for both the fixed effect parameters and the variance component. When the actual variance component is near zero, our estimates are almost efficient for both the fixed effect parameters and the variance component, and are almost optimal for the random effects. When the actual variance component is away from zero, our estimates are always asymptotically unbiased for the fixed effect parameters, whereas our estimate is asymptotically negative biased for the variance component. Another desirable merit is that, unlike the existing approaches mentioned above, our estimates for both the fixed effect parameters and the variance component only depend on the distribution of random effects rather than the estimates of random effects. An important finding is that the asymptotic covariance of our estimates for the fixed effect parameters will become smaller in general as the variance component, an index of the intra-cluster association, increases, and can be noticeably reduced by assigning the values of the fixed effect covariates as different as possible among different observations in any cluster. However, if the fixed effect covariate has the same or almost equal values among different observations in any cluster, the asymptotic variance of the estimate for the corresponding fixed effect parameter may increase as the variance component gets larger. This feature may be useful in designing a valid experiment or sampling for the Poisson mixed model. Unless the variance component is small, the fixed effect covariates should be designed to have values as different as possible among different observations in any cluster. It is further shown, through simulation, the proposed approach performs better than the PQL and GEF approaches. Thesis Newfoundland studies University of Newfoundland Memorial University of Newfoundland: Digital Archives Initiative (DAI) Clayton ENVELOPE(-64.183,-64.183,-65.167,-65.167)