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Maximization by Parts in Likelihood Inference

dc.contributor.authorSong, Peter X.-K.
dc.contributor.authorFan, Yanquin
dc.contributor.authorKalbfleish, John D.
dc.date.accessioned2020-09-13T20:56:15Z
dc.date.available2020-09-13T20:56:15Z
dc.date.issued2003
dc.identifier.urihttp://hdl.handle.net/1803/15742
dc.description.abstractThis paper presents and examines a new algorithm for solving a score equation for the maximum likelihood estimate in certain problems of practical interest. The method circumvents the need to compute second order derivatives of the full likelihood function. It exploits the structure of certain models that yield a natural decomposition of a very complicated likelihood function. In this decomposition, the first part is a log likelihood from a simply analyzed model and the second part is used to update estimates from the first. Convergence properties of this fixed point algorithm are examined and asymptotics are derived for estimators obtained by using only a finite number of steps. Illustrative examples considered in the paper include bivariate and multivariate Gaussian copula models, nonnormal random effects and state space models. Properties of the algorithm and of estimators are evaluated in simulation studies on a bivariate copula model and a nonnormal linear random effects model.
dc.language.isoen_US
dc.publisherVanderbilt Universityen
dc.subjectCopula Models
dc.subjectFixed-Point Algorithm
dc.subjectInformation Dominance
dc.subjectIterative Algorithm
dc.subjectNonnormal Random effects
dc.subjectScore Equation
dc.subjectState Space Models
dc.subject.other
dc.titleMaximization by Parts in Likelihood Inference
dc.typeWorking Paperen
dc.description.departmentEconomics


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