Efficient algorithms for Bayesian semi-parametric regression models

Semiparametric models have played an increasingly important role in statistical research and received much attention in both frequentist and Bayesian contexts. They are known to be very flexible while overcoming the problem of ‘curse of dimensionality’, and thus find numerous applications in the fie...

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Bibliographic Details
Main Author: Zhao Kaifeng
Other Authors: Chen Ning
Format: Thesis
Language:English
Published: 2015
Subjects:
Online Access:http://hdl.handle.net/10356/65373
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author Zhao Kaifeng
author2 Chen Ning
author_facet Chen Ning
Zhao Kaifeng
author_sort Zhao Kaifeng
collection NTU
description Semiparametric models have played an increasingly important role in statistical research and received much attention in both frequentist and Bayesian contexts. They are known to be very flexible while overcoming the problem of ‘curse of dimensionality’, and thus find numerous applications in the fields of econometrics, bioinformatics, biomedicine and others. Therefore, it is an interesting but challenging problem to develop semiparametric models for various circumstances with efficient algorithms for statistical inference. In this thesis, we propose Bayesian approaches for two popular classes of semiparametric models, single-index models for Tobit quantile regression and partially linear additive models with automatic and simultaneous model selection and estimation. Based on Markov Chain Monte Carlo method and mean field variational Bayes approximation scheme, we develop efficient algorithms for posterior inferences. Our approaches extend the scope of the applicabilities of the aforementioned semiparametric models from both theoretical and empirical perspectives. With extensive simulation studies, real data examples and comparative works, the proposed approaches are well demonstrated and illustrated.
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spelling ntu-10356/653732023-02-28T23:35:08Z Efficient algorithms for Bayesian semi-parametric regression models Zhao Kaifeng Chen Ning Lian Heng School of Physical and Mathematical Sciences DRNTU::Science::Mathematics::Statistics Semiparametric models have played an increasingly important role in statistical research and received much attention in both frequentist and Bayesian contexts. They are known to be very flexible while overcoming the problem of ‘curse of dimensionality’, and thus find numerous applications in the fields of econometrics, bioinformatics, biomedicine and others. Therefore, it is an interesting but challenging problem to develop semiparametric models for various circumstances with efficient algorithms for statistical inference. In this thesis, we propose Bayesian approaches for two popular classes of semiparametric models, single-index models for Tobit quantile regression and partially linear additive models with automatic and simultaneous model selection and estimation. Based on Markov Chain Monte Carlo method and mean field variational Bayes approximation scheme, we develop efficient algorithms for posterior inferences. Our approaches extend the scope of the applicabilities of the aforementioned semiparametric models from both theoretical and empirical perspectives. With extensive simulation studies, real data examples and comparative works, the proposed approaches are well demonstrated and illustrated. ​Doctor of Philosophy (SPMS) 2015-09-02T02:27:22Z 2015-09-02T02:27:22Z 2015 2015 Thesis Zhao K. (2015). Efficient algorithms for Bayesian semi-parametric regression models. Doctoral thesis, Nanyang Technological University, Singapore. http://hdl.handle.net/10356/65373 en 116 p. application/pdf
spellingShingle DRNTU::Science::Mathematics::Statistics
Zhao Kaifeng
Efficient algorithms for Bayesian semi-parametric regression models
title Efficient algorithms for Bayesian semi-parametric regression models
title_full Efficient algorithms for Bayesian semi-parametric regression models
title_fullStr Efficient algorithms for Bayesian semi-parametric regression models
title_full_unstemmed Efficient algorithms for Bayesian semi-parametric regression models
title_short Efficient algorithms for Bayesian semi-parametric regression models
title_sort efficient algorithms for bayesian semi parametric regression models
topic DRNTU::Science::Mathematics::Statistics
url http://hdl.handle.net/10356/65373
work_keys_str_mv AT zhaokaifeng efficientalgorithmsforbayesiansemiparametricregressionmodels