Generalized structural time series model

new class of univariate time series models is developed, the Generalized Structural (GEST) time series model. The GEST model extends Gaussian structural time series models by allowing the distribution of the dependent variable to come from any parametric distribution, including highly skew and=or ku...

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Main Author: Djennad, Abdelmadjid
Published: London Metropolitan University 2014
Subjects:
Online Access:http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.639422
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spelling ndltd-bl.uk-oai-ethos.bl.uk-6394222016-10-04T03:29:58ZGeneralized structural time series modelDjennad, Abdelmadjid2014new class of univariate time series models is developed, the Generalized Structural (GEST) time series model. The GEST model extends Gaussian structural time series models by allowing the distribution of the dependent variable to come from any parametric distribution, including highly skew and=or kurtotic distributions. Furthermore, the GEST model expands the systematic part of time series models to allow the explicit modelling of any or all of the distribution parameters as structural terms and (smoothed) functions of independent variables. The proposed GEST model primarily addresses the difficulty in modelling time-varying skewness and kurtosis (beyond location and dispersion time series models). The originality of the thesis starts from Chapter 6 and in particular Chapter 7 and Chapter 8, with applications of the GEST model in Chapter 9. Chapters 2 and 3 contain the literature review of non-Gaussian time series models, Chapter 4 is a reproduction of Chapter 17 in Pawitan (2001), which contains an alternative method for estimating the hyperparameters instead of using the Kalman filter, and Chapter 5 is an application of Chapter 4 to smoothing Gaussian structural time series models.519.55510 MathematicsLondon Metropolitan Universityhttp://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.639422http://repository.londonmet.ac.uk/672/Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 519.55
510 Mathematics
spellingShingle 519.55
510 Mathematics
Djennad, Abdelmadjid
Generalized structural time series model
description new class of univariate time series models is developed, the Generalized Structural (GEST) time series model. The GEST model extends Gaussian structural time series models by allowing the distribution of the dependent variable to come from any parametric distribution, including highly skew and=or kurtotic distributions. Furthermore, the GEST model expands the systematic part of time series models to allow the explicit modelling of any or all of the distribution parameters as structural terms and (smoothed) functions of independent variables. The proposed GEST model primarily addresses the difficulty in modelling time-varying skewness and kurtosis (beyond location and dispersion time series models). The originality of the thesis starts from Chapter 6 and in particular Chapter 7 and Chapter 8, with applications of the GEST model in Chapter 9. Chapters 2 and 3 contain the literature review of non-Gaussian time series models, Chapter 4 is a reproduction of Chapter 17 in Pawitan (2001), which contains an alternative method for estimating the hyperparameters instead of using the Kalman filter, and Chapter 5 is an application of Chapter 4 to smoothing Gaussian structural time series models.
author Djennad, Abdelmadjid
author_facet Djennad, Abdelmadjid
author_sort Djennad, Abdelmadjid
title Generalized structural time series model
title_short Generalized structural time series model
title_full Generalized structural time series model
title_fullStr Generalized structural time series model
title_full_unstemmed Generalized structural time series model
title_sort generalized structural time series model
publisher London Metropolitan University
publishDate 2014
url http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.639422
work_keys_str_mv AT djennadabdelmadjid generalizedstructuraltimeseriesmodel
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