U- AND V-STATISTICS FOR INCOMPLETE DATA AND THEIR APPLICATION TO MODEL SPECIFICATION TESTING

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U- AND V-STATISTICS FOR INCOMPLETE DATA AND THEIR APPLICATION TO MODEL SPECIFICATION TESTING

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dc.contributor.advisor Milošević, Bojana
dc.contributor.author Aleksić, Danijel
dc.date.accessioned 2026-02-03T15:40:31Z
dc.date.available 2026-02-03T15:40:31Z
dc.date.issued 2026-01
dc.identifier.uri http://hdl.handle.net/123456789/5781
dc.description.abstract This dissertation addresses the problem of model specification testing in situa- tions where data are incomplete, utilizing the existing theory of non-degenerate and weakly degenerate U- and V-statistics. The first two chapters lay the theoretical groundwork by pre- senting essential concepts related to U- and V-statistics and the general mathematical frame- work of missing data analysis, which serve as the foundation for the new results developed in subsequent chapters. In Chapter 3, a novel test for assessing the missing completely at random (MCAR) assump- tion is introduced. This test demonstrates improved control of the type I error rate and supe- rior power performance compared to the main competitor across the majority of the simulated scenarios examined. Chapter 4 explores the application of Kendall’s test for independence in the presence of MCAR data. It provides both theoretical insights and simulation-based comparisons of the complete-case analysis and median imputation, pointing out their individual advantages and drawbacks. Chapter 5 focuses on testing for multivariate normality when data are incomplete. It rig- orously establishes the validity of the complete-case approach under MCAR and proposes a bootstrap method to approximate p -values when imputation is employed. Additionally, vari- ous imputation techniques are evaluated with respect to their impact on the type I error and the power of the test. Finally, Chapter 6 adapts the energy-based two-sample test to handle missing data by intro- ducing a weighted framework that makes full use of all available observations. Alongside some theoretical developments, the chapter presents two distinct bootstrap algorithms for p -value estimation under this approach. Additionally, the performance of several imputation methods is examined in this context, and appropriate bootstrap algorithm is proposed for that setting. en_US
dc.description.provenance Submitted by Slavisha Milisavljevic (slavisha) on 2026-02-03T15:40:31Z No. of bitstreams: 1 DanijelAleksicPhDThesis.pdf: 4605295 bytes, checksum: 7cb050554fff702e835de6dad1aca726 (MD5) en
dc.description.provenance Made available in DSpace on 2026-02-03T15:40:31Z (GMT). No. of bitstreams: 1 DanijelAleksicPhDThesis.pdf: 4605295 bytes, checksum: 7cb050554fff702e835de6dad1aca726 (MD5) Previous issue date: 2026-01 en
dc.language.iso en en_US
dc.publisher Beograd en_US
dc.title U- AND V-STATISTICS FOR INCOMPLETE DATA AND THEIR APPLICATION TO MODEL SPECIFICATION TESTING en_US
mf.author.birth-date 1998-09-25
mf.author.birth-place Zvornik en_US
mf.author.birth-country Republika Srpska BiH en_US
mf.author.residence-state Srbija en_US
mf.author.citizenship Srpsko en_US
mf.author.nationality Srbin en_US
mf.subject.area Mathematics en_US
mf.subject.keywords missing data, model specification testing, tests of MCAR, independence testing, goodness-of-fit testing, two-sample testing, bootstrap. en_US
mf.subject.subarea Probability and Statistics en_US
mf.contributor.committee Cuparić, Marija
mf.contributor.committee Obradović, Marko
mf.contributor.committee Bastidis, Apostolos
mf.university.faculty Mathematical Faculty en_US
mf.document.pages 105 en_US
mf.document.location Beograd en_US
mf.document.genealogy-project No en_US
mf.university Belgrade University en_US

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