A family of dynamic models for inference on point processes with applications to epidemic data

dc.contributor.authorPramij, Shenita
dc.date.issued2022-08
dc.description.abstractThere has been an increasing interest in the analysis of recurrent events, in particu- lar in the fields of epidemiology and public health. Despite their limited utilization, stochastic models provide great exibility for the analysis of epidemic data. Mod- els and methods for the statistical analysis of recurrent events, for instance, can be especially useful to model the spread of infectious diseases and make inferences on epidemic processes. In this study, we introduce a new family of dynamic models for recurrent event processes, called the family of dynamic modulated Poisson process (DMPP) models. A DMPP model includes internal and external covariates to model carryover effects, and dynamically adapts to change points. Such covariates are par- ticularly useful for modelling event clustering, a phenomenon frequently observed in epidemiology. We develop the maximum likelihood estimation procedure of the model parameters and discuss asymptotic properties of the estimators when a single process is under observation for arbitrarily large time periods. We present the results of an extensive simulation study conducted to investigate the finite sample properties of the estimators, as well as effects of various types of model misspecifications. We demon- strate an application of our model and methods to analyze a real-life infectious disease dataset. Finally, we discuss possible extensions of our model and methods as future research.
dc.description.noteIncludes bibliographical references (pages 98-102)
dc.format.extentxii, 112 pages : illustrations (some colour)
dc.format.mediumText
dc.identifier.doihttps://doi.org/10.48336/BDSA-4440
dc.identifier.urihttps://hdl.handle.net/20.500.14783/2080
dc.language.isoen
dc.publisherMemorial University of Newfoundland
dc.rights.licenseThe author retains copyright ownership and moral rights in this thesis. Neither the thesis nor substantial extracts from it may be printed or otherwise reproduced without the author's permission.
dc.subjectrecurrent event processes
dc.subjectpoint processes
dc.subjectdynamic stochastic models, epidemic data
dc.subject.lcshStochastic models
dc.subject.lcshRecurrent sequences (Mathematics)
dc.subject.lcshPoint processes
dc.subject.lcshEpidemiology—Statistical methods
dc.titleA family of dynamic models for inference on point processes with applications to epidemic data
dc.typeMaster thesis
mem.campusSt. John's Campus
mem.convocationDate2022-10
mem.departmentMathematics and Statistics
mem.divisionsMathStat
mem.facultyFaculty of Science
mem.fullTextStatuspublic
mem.institutionMemorial University of Newfoundland
mem.isPublishedunpub
mem.thesisAuthorizedNamePramij, Shenita
thesis.degree.disciplineMathematics and Statistics
thesis.degree.grantorMemorial University of Newfoundland
thesis.degree.levelmasters
thesis.degree.nameM. Sc.

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
thesis.pdf
Size:
19.52 MB
Format:
Adobe Portable Document Format

Collections