Data-Adaptive Multivariate Density Estimation Using Regular Pavings, With Applications to Simulation-Intensive Inference

dc.contributor.authorHarlow, Jennifer
dc.date.accessioned2014-04-29T23:11:44Z
dc.date.available2014-04-29T23:11:44Z
dc.date.issued2013en
dc.description.abstractA regular paving (RP) is a finite succession of bisections that partitions a multidimensional box into sub-boxes using a binary tree-based data structure, with the restriction that an existing sub-box in the partition may only be bisected on its first widest side. Mapping a real value to each element of the partition gives a real-mapped regular paving (RMRP) that can be used to represent a piecewise-constant function density estimate on a multidimensional domain. The RP structure allows real arithmetic to be extended to density estimates represented as RMRPs. Other operations such as computing marginal and conditional functions can also be carried out very efficiently by exploiting these arithmetical properties and the binary tree structure. The purpose of this thesis is to explore the potential for density estimation using RPs. The thesis is structured in three parts. The first part formalises the operational properties of RP-structured density estimates. The next part considers methods for creating a suitable RP partition for an RMRP-structured density estimate. The advantages and disadvantages of a Markov chain Monte Carlo algorithm, already developed, are investigated and this is extended to include a semi-automatic method for heuristic diagnosis of convergence of the chain. An alternative method is also proposed that uses an RMRP to approximate a kernel density estimate. RMRP density estimates are not differentiable and have slower convergence rates than good multivariate kernel density estimators. The advantages of an RMRP density estimate relate to its operational properties. The final part of this thesis describes a new approach to Bayesian inference for complex models with intractable likelihood functions that exploits these operational properties.en
dc.identifier.urihttp://hdl.handle.net/10092/9160
dc.identifier.urihttp://dx.doi.org/10.26021/1899
dc.language.isoen
dc.publisherUniversity of Canterbury. School of Mathematics and Statisticsen
dc.relation.isreferencedbyNZCUen
dc.rightsCopyright Jennifer Harlowen
dc.rights.urihttps://canterbury.libguides.com/rights/thesesen
dc.subjectstatistical regular pavingen
dc.subjectreal-mapped regular pavingen
dc.subjectdata-adaptive histogramen
dc.subjectmultivariate histogramen
dc.subjectnonparametric density estimationen
dc.subjectMarkov Chain Monte Carloen
dc.subjectregular paving approximate Bayesian computationen
dc.subjectsimulation-intensive inferenceen
dc.titleData-Adaptive Multivariate Density Estimation Using Regular Pavings, With Applications to Simulation-Intensive Inferenceen
dc.typeTheses / Dissertations
thesis.degree.disciplineStatisticsen
thesis.degree.grantorUniversity of Canterburyen
thesis.degree.levelMastersen
thesis.degree.nameMaster of Scienceen
uc.bibnumber1999965en
uc.collegeFaculty of Engineeringen
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