Please use this identifier to cite or link to this item: http://hdl.handle.net/1942/47871
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dc.contributor.advisorVerhasselt, Anneleen-
dc.contributor.advisorVan Keilegom, Ingrid-
dc.contributor.authorD'HAEN, Myrthe-
dc.date.accessioned2025-12-10T07:34:40Z-
dc.date.available2025-12-10T07:34:40Z-
dc.date.issued2025-
dc.date.submitted2025-12-05T15:48:52Z-
dc.identifier.urihttp://hdl.handle.net/1942/47871-
dc.description.abstractThroughout the many domains in statistics, traditional models often assume independence of the data. This typically comes with great theoretical simplification, but numerous real-life situations also violate this assumption. In such contexts, copula modelling is a particularly useful tool to enhance model validity. Specifically, copula functions link marginal quantities and capture any interdependence present, while preserving model interpretability due to a conceptual separation of this dependence from the rest of the model. Copula models for two dependence-invoking contexts are considered in this dissertation. We first work in the domain of survival analysis, that is inherently plagued by the phenomenon of censoring: whereas primary interest is in the time T until a specific event occurs, observation of the latter is sometimes precluded by an earlier competing event. Nonetheless, the censoring time C until this alternative event contains relevant information on T. Under independence of T and C, it only contributes to the available information about T by ensuring that T > C for that data subject. Frequently, however, T and C are connected through positive or negative dependence, such that knowing C increases the likeliness of T being in the near or further future, respectively, as compared to the case in which C would not have been observed yet. Such dependent censoring is often handled using copula models. Yet, as T and C are never simultaneously observed for one subject, it is theoretically impossible to distinguish independent from dependent censoring without imposing formal restrictions; this is referred to as nonidentifiability. Literature has therefore, initially, mostly focused on flexible (i.e. nonparametric) marginal modelling, while making the overly strict assumption of a completely known dependence structure. Over the past years, research has shown the possibility of less restrictive copula assumptions – viz. parametric rather than fully known copula functions – at the cost of likewise parametric margins. The first part of this thesis is situated in this area and further explores the boundary between flexibility and nonidentifiability-
dc.language.isoen-
dc.titleCopula models for complex data: applications to dependent censoring and longitudinal data-
dc.typeTheses and Dissertations-
local.format.pages336-
local.bibliographicCitation.jcatT1-
local.type.refereedNon-Refereed-
local.type.specifiedPhd thesis-
local.type.programmeVSC-
local.provider.typePdf-
local.uhasselt.internationalno-
item.accessRightsEmbargoed Access-
item.fulltextWith Fulltext-
item.fullcitationD'HAEN, Myrthe (2025) Copula models for complex data: applications to dependent censoring and longitudinal data.-
item.contributorD'HAEN, Myrthe-
item.embargoEndDate2030-12-02-
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