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Generalized Bayesian model selection using reversible jump Markov chain Monte Carlo

dc.contributor.advisor Altınkaya, Mustafa Aziz en_US
dc.contributor.advisor Kuruoğlu, Ercan Engin en_US
dc.contributor.author Karakuş, Oktay
dc.date.accessioned 2023-11-16T12:03:33Z
dc.date.available 2023-11-16T12:03:33Z
dc.date.issued 2017-11
dc.department Electrical and Electronics Engineering en_US
dc.description Thesis (Doctoral)--Izmir Institute of Technology, Electronics and Communication Engineering, Izmir, 2017 en_US
dc.description Full text release delayed at author's request until 2019.12.28 en_US
dc.description Includes bibliographical references (leaves: 155-173) en_US
dc.description Text in English; Abstract: Turkish and English en_US
dc.description.abstract The main objective of this thesis is to suggest a general Bayesian framework for model selection based on reversible jump Markov chain Monte Carlo (RJMCMC) algorithm. In particular, we aim to reveal the undiscovered potentials of RJMCMC in model selection applications by exploiting the original formulation to explore spaces of di erent classes or structures and thus, to show that RJMCMC o ers a wider interpretation than just being a trans-dimensional model selection algorithm. The general practice is to use RJMCMC in a trans-dimensional framework e.g. in model estimation studies of linear time series, such as AR and ARMA and mixture processes, etc. In this thesis, we propose a new interpretation on RJMCMC which reveals the undiscovered potentials of the algorithm. This new interpretation, firstly, extends the classical trans-dimensional approach to a much wider meaning by exploring the spaces of linear and nonlinear models in terms of the nonlinear (polynomial) time series models. Polynomial process modelling is followed by the definition of a new type of RJMCMC move that performs transitions between various generic model spaces irrespective of model sizes. Then, we apply this new framework to the identification of Volterra systems with an application of nonlinear channel estimation of an OFDM communication system. The proposed RJMCMC move has been adjusted to explore the spaces of di erent distribution families by matching the common properties of the model spaces such as norm, and this leads us to perform a distribution estimation study of the observed real-life data sets including, impulsive noise in power-line communications, seismic acceleration time series, remote sensing images, etc. Simulation results demonstrate the remarkable performance of the proposed method in nonlinearity degree estimation and in transitions between di erent classes of models. The proposed method uses RJMCMC in an unorthodox way and reveals its potential to be a general estimation method by performing the reversible jump mechanism between spaces of di erent model classes. en_US
dc.format.extent xv, 191 leaves en_US
dc.identifier.citationreference Karakuş, O. (2017). Generalised Bayesian model selection using reversible jump Markov chain Monte Carlo. Unpublished doctoral dissertation, İzmir Institute of Technology, İzmir, Turkey en_US
dc.identifier.uri http://standard-demo.gcris.com/handle/123456789/6093
dc.institutionauthor Karakuş, Oktay
dc.language.iso en en_US
dc.publisher Izmir Institute of Technology en_US
dc.relation.publicationcategory Tez en_US
dc.rights info:eu-repo/semantics/openAccess en_US
dc.subject Bayesian Networks en_US
dc.subject RJMCMC en_US
dc.subject Monte Carlo method en_US
dc.title Generalized Bayesian model selection using reversible jump Markov chain Monte Carlo en_US
dc.title.alternative Tersine atlamalı Markov zinciri Monte Carlo kullanarak genelleştirilmiş Bayesçi model seçimi en_US
dc.type Doctoral Thesis en_US
dspace.entity.type Publication

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