Particle filtering for partially observed Gaussian state space models
Solving Bayesian estimation problems where the posterior distribution evolves over time through the accumulation of data has many applications for dynamic models. A large number of algorithms based on particle filtering methods, also known as sequential Monte Carlo algorithms, have recently been proposed to solve these problems. We propose a special particle filtering method which uses random mixtures of normal distributions to represent the posterior distributions of partially observed Gaussian state space models. This algorithm is based on a marginalization idea for improving efficiency and can lead to substantial gains over standard algorithms. It differs from previous algorithms which were only applicable to conditionally linear Gaussian state space models. Computer simulations are carried out to evaluate the performance of the proposed algorithm for dynamic tobit and probit models. Copyright 2002 Royal Statistical Society.
Year of publication: |
2002
|
---|---|
Authors: | Andrieu, Christophe ; Doucet, Arnaud |
Published in: |
Journal of the Royal Statistical Society Series B. - Royal Statistical Society - RSS, ISSN 1369-7412. - Vol. 64.2002, 4, p. 827-836
|
Publisher: |
Royal Statistical Society - RSS |
Saved in:
Saved in favorites
Similar items by person
-
Discussion on the paper by Brooks, Giudici and Roberts
Robert, Christian P., (2003)
-
Particle Markov chain Monte Carlo methods
Andrieu, Christophe, (2010)
-
Singh, Sumeetpal S.,
- More ...