Modern Monte Carlo Methods and Their Application in Semiparametric Regression

dc.contributor.advisorTu, Wanzhu
dc.contributor.authorThomas, Samuel Joseph
dc.contributor.otherBoukai, Ben
dc.contributor.otherLi, Xiaochen
dc.contributor.otherSong, Fengguang
dc.date.accessioned2021-05-24T18:23:12Z
dc.date.available2021-05-24T18:23:12Z
dc.date.issued2021-05
dc.degree.date2021en_US
dc.degree.discipline
dc.degree.grantorIndiana Universityen_US
dc.degree.levelPh.D.en_US
dc.descriptionIndiana University-Purdue University Indianapolis (IUPUI)en_US
dc.description.abstractThe essence of Bayesian data analysis is to ascertain posterior distributions. Posteriors generally do not have closed-form expressions for direct computation in practical applications. Analysts, therefore, resort to Markov Chain Monte Carlo (MCMC) methods for the generation of sample observations that approximate the desired posterior distribution. Standard MCMC methods simulate sample values from the desired posterior distribution via random proposals. As a result, the mechanism used to generate the proposals inevitably determines the efficiency of the algorithm. One of the modern MCMC techniques designed to explore the high-dimensional space more efficiently is Hamiltonian Monte Carlo (HMC), based on the Hamiltonian differential equations. Inspired by classical mechanics, these equations incorporate a latent variable to generate MCMC proposals that are likely to be accepted. This dissertation discusses how such a powerful computational approach can be used for implementing statistical models. Along this line, I created a unified computational procedure for using HMC to fit various types of statistical models. The procedure that I proposed can be applied to a broad class of models, including linear models, generalized linear models, mixed-effects models, and various types of semiparametric regression models. To facilitate the fitting of a diverse set of models, I incorporated new parameterization and decomposition schemes to ensure the numerical performance of Bayesian model fitting without sacrificing the procedure’s general applicability. As a concrete application, I demonstrate how to use the proposed procedure to fit a multivariate generalized additive model (GAM), a nonstandard statistical model with a complex covariance structure and numerous parameters. Byproducts of the research include two software packages that all practical data analysts to use the proposed computational method to fit their own models. The research’s main methodological contribution is the unified computational approach that it presents for Bayesian model fitting that can be used for standard and nonstandard statistical models. Availability of such a procedure has greatly enhanced statistical modelers’ toolbox for implementing new and nonstandard statistical models.en_US
dc.identifier.urihttps://hdl.handle.net/1805/25999
dc.identifier.urihttp://dx.doi.org/10.7912/C2/2819
dc.language.isoen_USen_US
dc.subjectBayesian Computationen_US
dc.subjectGeneralized Additive Modelen_US
dc.subjectHamiltonian Monte Carloen_US
dc.subjectMarkov Chain Monte Carloen_US
dc.subjectSemiparametric Regressionen_US
dc.titleModern Monte Carlo Methods and Their Application in Semiparametric Regressionen_US
dc.typeDissertation
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