Asymmetric heavy-tailed distributions : theory and applications to finance and risk management
This thesis focuses on construction, properties and estimation of asymmetric heavy-tailed distributions, as well as on their applications to financial modeling and risk measurement. First of all, we suggest a general procedure to construct a fully asymmetric distribution based on a symmetrically par...
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ndltd-LACETR-oai-collectionscanada.gc.ca-QMM.1028542014-02-13T04:02:37ZAsymmetric heavy-tailed distributions : theory and applications to finance and risk managementZhu, Dongming, 1963-Finance -- Statistical methods.Risk assessment -- Mathematical models.This thesis focuses on construction, properties and estimation of asymmetric heavy-tailed distributions, as well as on their applications to financial modeling and risk measurement. First of all, we suggest a general procedure to construct a fully asymmetric distribution based on a symmetrically parametric distribution, and establish some natural relationships between the symmetric and asymmetric distributions. Then, three new classes of asymmetric distributions are proposed by using the procedure: the Asymmetric Exponential Power Distributions (AEPD), the Asymmetric Student-t Distributions (ASTD) and the Asymmetric Generalized t Distribution (AGTD). For the first two distributions, we give an interpretation of their parameters and explore basic properties of them, including moments, expected shortfall, characterization by the maximum entropy property, and the stochastic representation. Although neither distribution satisfies the regularity conditions under which the ML estimators have the usual asymptotics, due to a non-differentiable likelihood function, we nonetheless establish asymptotics for the full MLE of the parameters. A closed-form expression for the Fisher information matrix is derived, and Monte Carlo studies are provided. We also illustrate the usefulness of the GARCH-type models with the AEPD and ASTD innovations in the context of predicting downside market risk of financial assets and demonstrate their superiority over skew-normal and skew-Student's t GARCH models. Finally, two new classes of generalized extreme value distributions, which include Jenkinson's GEV (Generalized Extreme Value) distribution (Jenkinson, 1955) as special cases, are proposed by using the maximum entropy principle, and their properties are investigated in detail.McGill University2007Electronic Thesis or Dissertationapplication/pdfenalephsysno: 002615115proquestno: AAINR32338Theses scanned by UMI/ProQuest.© Dongming Zhu, 2007Doctor of Philosophy (Department of Economics.) http://digitool.Library.McGill.CA:80/R/?func=dbin-jump-full&object_id=102854 |
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Finance -- Statistical methods. Risk assessment -- Mathematical models. |
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Finance -- Statistical methods. Risk assessment -- Mathematical models. Zhu, Dongming, 1963- Asymmetric heavy-tailed distributions : theory and applications to finance and risk management |
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This thesis focuses on construction, properties and estimation of asymmetric heavy-tailed distributions, as well as on their applications to financial modeling and risk measurement. First of all, we suggest a general procedure to construct a fully asymmetric distribution based on a symmetrically parametric distribution, and establish some natural relationships between the symmetric and asymmetric distributions. Then, three new classes of asymmetric distributions are proposed by using the procedure: the Asymmetric Exponential Power Distributions (AEPD), the Asymmetric Student-t Distributions (ASTD) and the Asymmetric Generalized t Distribution (AGTD). For the first two distributions, we give an interpretation of their parameters and explore basic properties of them, including moments, expected shortfall, characterization by the maximum entropy property, and the stochastic representation. Although neither distribution satisfies the regularity conditions under which the ML estimators have the usual asymptotics, due to a non-differentiable likelihood function, we nonetheless establish asymptotics for the full MLE of the parameters. A closed-form expression for the Fisher information matrix is derived, and Monte Carlo studies are provided. We also illustrate the usefulness of the GARCH-type models with the AEPD and ASTD innovations in the context of predicting downside market risk of financial assets and demonstrate their superiority over skew-normal and skew-Student's t GARCH models. Finally, two new classes of generalized extreme value distributions, which include Jenkinson's GEV (Generalized Extreme Value) distribution (Jenkinson, 1955) as special cases, are proposed by using the maximum entropy principle, and their properties are investigated in detail. |
author |
Zhu, Dongming, 1963- |
author_facet |
Zhu, Dongming, 1963- |
author_sort |
Zhu, Dongming, 1963- |
title |
Asymmetric heavy-tailed distributions : theory and applications to finance and risk management |
title_short |
Asymmetric heavy-tailed distributions : theory and applications to finance and risk management |
title_full |
Asymmetric heavy-tailed distributions : theory and applications to finance and risk management |
title_fullStr |
Asymmetric heavy-tailed distributions : theory and applications to finance and risk management |
title_full_unstemmed |
Asymmetric heavy-tailed distributions : theory and applications to finance and risk management |
title_sort |
asymmetric heavy-tailed distributions : theory and applications to finance and risk management |
publisher |
McGill University |
publishDate |
2007 |
url |
http://digitool.Library.McGill.CA:80/R/?func=dbin-jump-full&object_id=102854 |
work_keys_str_mv |
AT zhudongming1963 asymmetricheavytaileddistributionstheoryandapplicationstofinanceandriskmanagement |
_version_ |
1716643924152418304 |