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Autori principali: Kulikova, Maria V., Tsyganova, Julia V., Kulikov, Gennady Yu.
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2402.11560
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author Kulikova, Maria V.
Tsyganova, Julia V.
Kulikov, Gennady Yu.
author_facet Kulikova, Maria V.
Tsyganova, Julia V.
Kulikov, Gennady Yu.
contents One of the modern research lines in econometrics studies focuses on translating a wide variety of structural econometric models into their state-space form, which allows for efficient unknown dynamic system state and parameter estimations by the Kalman filtering scheme. The mentioned trend yields advanced state-space model structures, which demand innovative estimation techniques driven by application requirements to be devised. This paper explores both the linear time-invariant multiple-input, multiple-output system (LTI MIMO) and the pairwise Markov model (PMM) with the related pairwise Kalman filter (PKF). In particular, we design robust gradient-based adaptive Kalman-like filtering methods for the simultaneous state and parameter estimation in the outlined model structures. Our methods are fast and accurate because their analytically computed gradient is utilized in the calculation instead of its numerical approximation. Also, these employ the numerically robust $UDU^\top$-factorization-based Kalman filter implementation, which is reliable in practice. Our novel techniques are examined on numerical examples and used for treating one stochastic model in econometrics.
format Preprint
id arxiv_https___arxiv_org_abs_2402_11560
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle UD-based pairwise and MIMO Kalman-like filtering for estimation of econometric model structures
Kulikova, Maria V.
Tsyganova, Julia V.
Kulikov, Gennady Yu.
Optimization and Control
One of the modern research lines in econometrics studies focuses on translating a wide variety of structural econometric models into their state-space form, which allows for efficient unknown dynamic system state and parameter estimations by the Kalman filtering scheme. The mentioned trend yields advanced state-space model structures, which demand innovative estimation techniques driven by application requirements to be devised. This paper explores both the linear time-invariant multiple-input, multiple-output system (LTI MIMO) and the pairwise Markov model (PMM) with the related pairwise Kalman filter (PKF). In particular, we design robust gradient-based adaptive Kalman-like filtering methods for the simultaneous state and parameter estimation in the outlined model structures. Our methods are fast and accurate because their analytically computed gradient is utilized in the calculation instead of its numerical approximation. Also, these employ the numerically robust $UDU^\top$-factorization-based Kalman filter implementation, which is reliable in practice. Our novel techniques are examined on numerical examples and used for treating one stochastic model in econometrics.
title UD-based pairwise and MIMO Kalman-like filtering for estimation of econometric model structures
topic Optimization and Control
url https://arxiv.org/abs/2402.11560