Nonlinear long memory models with applications in finance

The last decade has witnessed a great deal of research in modelling volatility of financial asset returns, expressed by time-varying variances and covariances. The importance of modelling volatility lies in the dependence of any financial investment decision on the expected risk and return as formal...

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Main Author: Zaffaroni, Paolo
Published: London School of Economics and Political Science (University of London) 1997
Subjects:
330
Online Access:http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.267306
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spelling ndltd-bl.uk-oai-ethos.bl.uk-2673062015-06-03T03:22:06ZNonlinear long memory models with applications in financeZaffaroni, Paolo1997The last decade has witnessed a great deal of research in modelling volatility of financial asset returns, expressed by time-varying variances and covariances. The importance of modelling volatility lies in the dependence of any financial investment decision on the expected risk and return as formalized in classical asset pricing theory. Precise evaluation of volatilities is a compulsory step in order to perform correct options pricing according to recent theories of the term structure of interest rates and for the construction of dynamic hedge portfolios. Models of time varying volatility represent an important ground for the development of new estimation and forecasting techniques for situations not reconcilable with the Gaussian or, more generally, a linear time series framework. This is particularly true for the statistical analysis of time series with long range dependence in a nonlinear framework. The aim of this thesis is to introduce parametric nonlinear time series models with long memory, with particular emphasis on volatility models, and to provide a methodology which yields asymptotically exact inference on the parameters of the models. The importance of these results stems from: (i) rigorous asymptotics was lacking from the stochastic volatility literature; (ii) the statistical literature does not cover the analysis of the asymptotic behaviour of quadratic forms in nonlinear non-Gaussian variates that characterizes our problem.330Financial asset returnsLondon School of Economics and Political Science (University of London)http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.267306http://etheses.lse.ac.uk/1468/Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 330
Financial asset returns
spellingShingle 330
Financial asset returns
Zaffaroni, Paolo
Nonlinear long memory models with applications in finance
description The last decade has witnessed a great deal of research in modelling volatility of financial asset returns, expressed by time-varying variances and covariances. The importance of modelling volatility lies in the dependence of any financial investment decision on the expected risk and return as formalized in classical asset pricing theory. Precise evaluation of volatilities is a compulsory step in order to perform correct options pricing according to recent theories of the term structure of interest rates and for the construction of dynamic hedge portfolios. Models of time varying volatility represent an important ground for the development of new estimation and forecasting techniques for situations not reconcilable with the Gaussian or, more generally, a linear time series framework. This is particularly true for the statistical analysis of time series with long range dependence in a nonlinear framework. The aim of this thesis is to introduce parametric nonlinear time series models with long memory, with particular emphasis on volatility models, and to provide a methodology which yields asymptotically exact inference on the parameters of the models. The importance of these results stems from: (i) rigorous asymptotics was lacking from the stochastic volatility literature; (ii) the statistical literature does not cover the analysis of the asymptotic behaviour of quadratic forms in nonlinear non-Gaussian variates that characterizes our problem.
author Zaffaroni, Paolo
author_facet Zaffaroni, Paolo
author_sort Zaffaroni, Paolo
title Nonlinear long memory models with applications in finance
title_short Nonlinear long memory models with applications in finance
title_full Nonlinear long memory models with applications in finance
title_fullStr Nonlinear long memory models with applications in finance
title_full_unstemmed Nonlinear long memory models with applications in finance
title_sort nonlinear long memory models with applications in finance
publisher London School of Economics and Political Science (University of London)
publishDate 1997
url http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.267306
work_keys_str_mv AT zaffaronipaolo nonlinearlongmemorymodelswithapplicationsinfinance
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