Maximum likelihood recursive state estimation in state-space models: A new approach based on statistical analysis of incomplete data

11/09/2022
by   Budhi Arta Surya, et al.
0

This paper revisits the work of Rauch et al. (1965) and develops a novel method for recursive maximum likelihood particle filtering for general state-space models. The new method is based on statistical analysis of incomplete observations of the systems. Score function and conditional observed information of the incomplete observations/data are introduced and their distributional properties are discussed. Some identities concerning the score function and information matrices of the incomplete data are derived. Maximum likelihood estimation of state-vector is presented in terms of the score function and observed information matrices. In particular, to deal with nonlinear state-space, a sequential Monte Carlo method is developed. It is given recursively by an EM-gradient-particle filtering which extends the work of Lange (1995) for state estimation. To derive covariance matrix of state-estimation errors, an explicit form of observed information matrix is proposed. It extends Louis (1982) general formula for the same matrix to state-vector estimation. Under (Neumann) boundary conditions of state transition probability distribution, the inverse of this matrix coincides with the Cramer-Rao lower bound on the covariance matrix of estimation errors of unbiased state-estimator. In the case of linear models, the method shows that the Kalman filter is a fully efficient state estimator whose covariance matrix of estimation error coincides with the Cramer-Rao lower bound. Some numerical examples are discussed to exemplify the main results.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/29/2023

Maximum likelihood smoothing estimation in state-space models: An incomplete-information based approach

This paper revisits classical works of Rauch (1963, et al. 1965) and dev...
research
07/30/2018

Joint Estimation of Model and Observation Error Covariance Matrices in Data Assimilation: a Review

This paper is a review of a crucial topic in data assimilation: the join...
research
12/19/2018

The Mixture of Markov Jump Processes: Monte Carlo Method and the EM Estimation

This paper discusses tractable development and statistical estimation of...
research
10/06/2019

A theorem of Kalman and minimal state-space realization of Vector Autoregressive Models

We introduce a concept of autoregressive (AR)state-space realization tha...
research
06/17/2021

Minimax Estimation of Partially-Observed Vector AutoRegressions

To understand the behavior of large dynamical systems like transportatio...

Please sign up or login with your details

Forgot password? Click here to reset