Effect of misspecification of random effects distribution on the performance of parameters estimation methods in binary logistic mixed models.

dc.contributor.authorSENOU, MARCEL WANIGNON
dc.contributor.authorGLELE KAKAÏ, A. ROMAIN LUCAS
dc.contributor.authorLokonon, Bruno E.
dc.date.accessioned2026-06-02T16:06:57Z
dc.date.available2026-06-02T16:06:57Z
dc.date.issued2020
dc.description.abstractWe empirically compared a Bayesian estimation method (Integrated Nested Laplace Approximation, INLA) to three classical estimation methods (Penalized Quasi-Likelihood, PQL; Hierarchical Likelihood Method, HLM and Adaptive Gauss-Hermite Quadrature, AGHQ) under six random effect distributions in binary logistic mixed models. Results revealed that AGHQ and HLM had best performance for all distributions considered in the case of fixed effects. For the random effects, classical methods showed best performance for the symmetric distributions (normal, uniform and mixture-normal). AGHQ, HLM and INLA outperform PQL for normal and uniform distributions whatever the sample considered.
dc.identifier.doi10.16929/as/2020.2247.156
dc.identifier.otherBECDB-8454
dc.identifier.urihttps://dspace.uac.bj/handle/123456789/7597
dc.language.isofr
dc.relation.ispartofAfrika Statistika
dc.subjectbinary multilevel modeling
dc.subjectrandom effects
dc.subjectnon-normality
dc.subjectestimation methods
dc.subjectBayesian approach
dc.titleEffect of misspecification of random effects distribution on the performance of parameters estimation methods in binary logistic mixed models.
dc.typeArticle

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