On-line parameter estimation in general state-space models

The estimation of static parameters in general non-linear non-Gaussian state-space models is a long-standing problem. This is despite the advent of Sequential Monte Carlo (SMC, aka particle filters) methods, which provide very good approximations to the optimal filter under weak assumptions. Several...

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Hlavní autoři: Andrieu, C, Doucet, A, Tadić, V
Médium: Journal article
Jazyk:English
Vydáno: 2005
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author Andrieu, C
Doucet, A
Tadić, V
author_facet Andrieu, C
Doucet, A
Tadić, V
author_sort Andrieu, C
collection OXFORD
description The estimation of static parameters in general non-linear non-Gaussian state-space models is a long-standing problem. This is despite the advent of Sequential Monte Carlo (SMC, aka particle filters) methods, which provide very good approximations to the optimal filter under weak assumptions. Several algorithms based on SMC have been proposed in the past 10 years to solve the static parameter problem. However all the algorithms we are aware of suffer from the so-called 'degeneracy problem'. We propose here a methodology for point estimation of static parameters which does not suffer from this problem. Our methods take advantage of the fact that many state space models of interest are ergodic and stationary: this allows us to propose contrast functions for the static parameter which can be consistently estimated and optimised using simulation-based methods. Several types of contrast functions are possible but we focus here on the average of a so-called pseudo-likelihood which we maximize using on-line Expectation-Maximization type algorithms. In its basic form the algorithm requires the expression of the invariant distribution of the underlying state process. When the invariant distribution is unknown, we present an alternative which relies on indirect inference techniques. © 2005 IEEE.
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spelling oxford-uuid:1608101b-1b47-4069-ab9f-c8fc4559ef2c2022-03-26T10:28:49ZOn-line parameter estimation in general state-space modelsJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:1608101b-1b47-4069-ab9f-c8fc4559ef2cEnglishSymplectic Elements at Oxford2005Andrieu, CDoucet, ATadić, VThe estimation of static parameters in general non-linear non-Gaussian state-space models is a long-standing problem. This is despite the advent of Sequential Monte Carlo (SMC, aka particle filters) methods, which provide very good approximations to the optimal filter under weak assumptions. Several algorithms based on SMC have been proposed in the past 10 years to solve the static parameter problem. However all the algorithms we are aware of suffer from the so-called 'degeneracy problem'. We propose here a methodology for point estimation of static parameters which does not suffer from this problem. Our methods take advantage of the fact that many state space models of interest are ergodic and stationary: this allows us to propose contrast functions for the static parameter which can be consistently estimated and optimised using simulation-based methods. Several types of contrast functions are possible but we focus here on the average of a so-called pseudo-likelihood which we maximize using on-line Expectation-Maximization type algorithms. In its basic form the algorithm requires the expression of the invariant distribution of the underlying state process. When the invariant distribution is unknown, we present an alternative which relies on indirect inference techniques. © 2005 IEEE.
spellingShingle Andrieu, C
Doucet, A
Tadić, V
On-line parameter estimation in general state-space models
title On-line parameter estimation in general state-space models
title_full On-line parameter estimation in general state-space models
title_fullStr On-line parameter estimation in general state-space models
title_full_unstemmed On-line parameter estimation in general state-space models
title_short On-line parameter estimation in general state-space models
title_sort on line parameter estimation in general state space models
work_keys_str_mv AT andrieuc onlineparameterestimationingeneralstatespacemodels
AT douceta onlineparameterestimationingeneralstatespacemodels
AT tadicv onlineparameterestimationingeneralstatespacemodels