A new hidden Markov-switching volatility model

The thesis proposes and applies a two-state hidden Markov-switching model for financial time series featured with periodic structure breaks in volatility. The expected return, volatility and state transition probability are determined by three link functions respectively, whose coefficients are furt...

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Main Author: Liu, Xin Yi
Other Authors: Wang Peiming
Format: Theses and Dissertations
Language:English
Published: 2009
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Institution: Nanyang Technological University
Language: English
id sg-ntu-dr.10356-20675
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spelling sg-ntu-dr.10356-206752020-03-20T21:50:27Z A new hidden Markov-switching volatility model Liu, Xin Yi Wang Peiming School of Humanities and Social Sciences DRNTU::Social sciences::Economic theory The thesis proposes and applies a two-state hidden Markov-switching model for financial time series featured with periodic structure breaks in volatility. The expected return, volatility and state transition probability are determined by three link functions respectively, whose coefficients are further governed by the hidden state. The proposed model particularly emphasizes on the parallel structure of the two states. The parallel structure separates the INTER-state and INTRA-state dynamics, enhances greater transparency, balances the memory of both recent and distant history, provides more consistent economic implication, and greatly simplifies and stabilizes the EM algorithm. We further discuss its estimation, inference, standard errors of the parameter estimate, forecasting, model selection and implementation, especially our innovations in those issues. The Monte Carlo experiments suggest that the proposed estimation method is accurate and reliable, the choice of the initial state probability has little effect on proposed model, and the information matrix calculated numerically is stable and reliable. DOCTOR OF PHILOSOPHY (HSS) 2009-12-22T07:31:48Z 2009-12-22T07:31:48Z 2009 2009 Thesis Liu, X. Y. (2009). A new hidden markov-switching volatility model. Doctoral thesis, Nanyang Technological University, Singapore. 10356/20675 10.32657/10356/20675 en 243 p. application/pdf
institution Nanyang Technological University
building NTU Library
country Singapore
collection DR-NTU
language English
topic DRNTU::Social sciences::Economic theory
spellingShingle DRNTU::Social sciences::Economic theory
Liu, Xin Yi
A new hidden Markov-switching volatility model
description The thesis proposes and applies a two-state hidden Markov-switching model for financial time series featured with periodic structure breaks in volatility. The expected return, volatility and state transition probability are determined by three link functions respectively, whose coefficients are further governed by the hidden state. The proposed model particularly emphasizes on the parallel structure of the two states. The parallel structure separates the INTER-state and INTRA-state dynamics, enhances greater transparency, balances the memory of both recent and distant history, provides more consistent economic implication, and greatly simplifies and stabilizes the EM algorithm. We further discuss its estimation, inference, standard errors of the parameter estimate, forecasting, model selection and implementation, especially our innovations in those issues. The Monte Carlo experiments suggest that the proposed estimation method is accurate and reliable, the choice of the initial state probability has little effect on proposed model, and the information matrix calculated numerically is stable and reliable.
author2 Wang Peiming
author_facet Wang Peiming
Liu, Xin Yi
format Theses and Dissertations
author Liu, Xin Yi
author_sort Liu, Xin Yi
title A new hidden Markov-switching volatility model
title_short A new hidden Markov-switching volatility model
title_full A new hidden Markov-switching volatility model
title_fullStr A new hidden Markov-switching volatility model
title_full_unstemmed A new hidden Markov-switching volatility model
title_sort new hidden markov-switching volatility model
publishDate 2009
_version_ 1681039365688524800