Modernizing Latent Gaussian Process Inference for Non-Gaussian Responses

dc.contributor.authorCooper, Andrew Harrisonen
dc.contributor.committeechairGramacy, Robert B.en
dc.contributor.committeememberStrait, Justinen
dc.contributor.committeememberBooth, Annie Saueren
dc.contributor.committeememberHigdon, Daviden
dc.contributor.departmentStatisticsen
dc.date.accessioned2026-04-09T08:00:14Zen
dc.date.available2026-04-09T08:00:14Zen
dc.date.issued2026-04-08en
dc.description.abstractGaussian processes (GPs) are powerful tools for modeling non-linear data. In many situations, however, direct GP inference is not possible due to the nature of the response. Categorical and directional data, for instance, are examples of responses for which a Gaussian likelihood assumption is not appropriate. Latent GPs, typically in tandem with appropriate link functions, can be introduced to model responses with non-Gaussian likelihoods. But latent GPs do not scale well to large training data, especially when Monte Carlo integration is required. Consequently, fully Bayesian, sampling-based approaches have been largely abandoned in favor of maximization-based alternatives, such as Laplace/variational inference (VI) combined with low rank approximations. Though feasible for large training data sets, such schemes sacrifice uncertainty quantification and modeling fidelity, two aspects that are important to mu work on surrogate modeling of computer simulation experiments. In this work I propose a GP inference framework that takes advantage of a remarkably powerful rejection sampling approach known as elliptical slice sampling (ESS). My approach allows for computationally thriftier posterior integration while preserving fully Bayesian inference. I leverage this framework in the contexts of classification and circular modeling, both of which introduce unique latent inferential challenges. I demonstrate superiority over VI-based alternatives for both real and simulated examples, including a Binary Black Hole simulator (binary response) and data from a radio frequency identification experiment (angular response).en
dc.description.abstractgeneralScientific disciplines often produce data that exist in unique spaces. For instance, an experiment on a component's durability might have a binary outcome of either "success" or "failure," or a climatology study on wind patterns might generate directional data that exists on a sphere rather than a plane. Researchers have adapted powerful models like Gaussian Processes (GPs), which were not originally designed for these situations, to properly handle these types of data. However, they struggle to scale them to problems with large amounts of data without extending computational runtimes beyond the realm of human feasibility. Estimating GPs in these scenarios is often prohibitively costly even with cutting-edge computation available; to remedy this, shortcuts are often made through the use of approximations. On the plus side, training these models is much faster; on the negative side, these approaches tend to produce over-confident predictions, which is not desirable for disciplines where accurate quantification of model uncertainty is paramount. To address this drawback, I take advantage of a remarkably useful algorithm known as elliptical slice sampling (ESS). Application of this algorithm allows for thriftier model implementation and precludes the need for detrimental shortcuts. I showcase my method and its superior model performance on a variety of simulated and real examples, including a Binary Black Hole example and data from a radio frequency identification (RFID) experiment.en
dc.description.degreeDoctor of Philosophyen
dc.format.mediumETDen
dc.identifier.othervt_gsexam:45956en
dc.identifier.urihttps://hdl.handle.net/10919/142940en
dc.language.isoenen
dc.publisherVirginia Techen
dc.rightsIn Copyrighten
dc.rights.urihttp://rightsstatements.org/vocab/InC/1.0/en
dc.subjectGaussian Processesen
dc.subjectElliptical Slice Samplingen
dc.subjectComputer Experimentsen
dc.subjectClassificationen
dc.subjectCircular Modelingen
dc.titleModernizing Latent Gaussian Process Inference for Non-Gaussian Responsesen
dc.typeDissertationen
thesis.degree.disciplineStatisticsen
thesis.degree.grantorVirginia Polytechnic Institute and State Universityen
thesis.degree.leveldoctoralen
thesis.degree.nameDoctor of Philosophyen

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