Some models for multivariate time series for counts

dc.contributor.degreegrantinginstitutionAthens University of Economics and Business, Department of Statisticsen
dc.contributor.examinerPedeli, Xanthien
dc.contributor.examinerFokianos, Konstantinosen
dc.contributor.supervisorKarlis, Dimitriosen
dc.creatorXeni, Christinaen
dc.creatorΞενή, Χριστίναel
dc.date.accessioned2024-08-07T14:44:41Z
dc.date.issued2022
dc.date.submitted2022-05-11 11:00:24
dc.description.abstractIn many fields data are presented that evolve together over time. Such datacan be the prices of some shares on the stock exchange, the murders in different regions for a certain period of time or the arrivals at the differentairports of a specific country. In the literature there are categories of modelscapable of describing such data as parameter driven models and observationdriven models. Observation driven models are very popular for describingsuch data due to their ease in estimating parameters which is not true forparameter driven models. In this thesis, to emphasizing the advantages of parameter driven models, we present some of them that are flexible to describedata that evolve over time and describe cross-correlation, autocorrelationand overdispersion. Specifically, we will describe five parameter driven models, the State Space Multivariate Poisson model (SSMP), a doubly stochasticmodel with latent factors, multivariate Poisson scaled beta (MPSB) models, a dynamic factor model and the hierarchical Markov switching model(HMSM). All models to be presented are models that use modern numericalmethods for parameter estimation and the suitability of these methods hasbeen documented with examples.en
dc.embargo.expire2022-05-11T00:00:00Z
dc.embargo.ruleOpen access
dc.format.extent66p.
dc.identifierhttp://www.pyxida.aueb.gr/index.php?op=view_object&object_id=9472
dc.identifier.urihttps://beta-pyxida.aueb.gr/handle/123456789/9621
dc.languageen
dc.rights.licensehttps://creativecommons.org/licenses/by/4.0/
dc.subjectΠολυμεταβλητές χρονοσειρές μέτρησηςel
dc.subjectΑυτοσυσχέτισηel
dc.subjectΔιασταυρομένη συσχέτισηel
dc.subjectΥπερδιασποράel
dc.subjectΜοντέλα βάσει παραμέτρωνel
dc.subjectMultivariate time series of counten
dc.subjectAutocorrelationen
dc.subjectCross correlationen
dc.subjectOverdispresionen
dc.subjectParameter driven modelen
dc.titleSome models for multivariate time series for countsen
dc.title.alternativeΜερικά μοντέλα για πολυμεταβλητές χρονοσειρές μέτρησηςel
dc.typeText

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