Conditional Likelihood Estimators for Hidden Markov Models and Stochastic Volatility Models
This paper develops a new contrast process for parametric inference of general hidden Markov models, when the hidden chain has a non-compact state space. This contrast is based on the conditional likelihood approach, often used for ARCH-type models. We prove the strong consistency of the conditional likelihood estimators under appropriate conditions. The method is applied to the Kalman filter (for which this contrast and the exact likelihood lead to asymptotically equivalent estimators) and to the discretely observed stochastic volatility models. Copyright 2003 Board of the Foundation of the Scandinavian Journal of Statistics..
Year of publication: |
2003
|
---|---|
Authors: | Genon-Catalot, Valentine |
Published in: |
Scandinavian Journal of Statistics. - Danish Society for Theoretical Statistics, ISSN 0303-6898. - Vol. 30.2003, 2, p. 297-316
|
Publisher: |
Danish Society for Theoretical Statistics Finnish Statistical Society Norwegian Statistical Association Swedish Statistical Association |
Saved in:
Saved in favorites
Similar items by person
-
Asymptotic equivalence of estimating a poisson intensity and a positive diffusion drift
Genon-Catalot, Valentine, (2000)
-
Kernel estimation for Lévy driven stochastic convolutions
Comte, Fabienne, (2021)
-
DETECTING A CHANGE IN DISTRIBUTION : A NEW ASYMPTOTIC APPROACH USING AVERAGING METHODS
Cambry, Olivier de, (1992)
- More ...