Particle approximations of the score and observed information matrix for parameter estimation in state space models with linear computational cost

06/04/2013
by   Christopher Nemeth, et al.
0

Poyiadjis et al. (2011) show how particle methods can be used to estimate both the score and the observed information matrix for state space models. These methods either suffer from a computational cost that is quadratic in the number of particles, or produce estimates whose variance increases quadratically with the amount of data. This paper introduces an alternative approach for estimating these terms at a computational cost that is linear in the number of particles. The method is derived using a combination of kernel density estimation, to avoid the particle degeneracy that causes the quadratically increasing variance, and Rao-Blackwellisation. Crucially, we show the method is robust to the choice of bandwidth within the kernel density estimation, as it has good asymptotic properties regardless of this choice. Our estimates of the score and observed information matrix can be used within both online and batch procedures for estimating parameters for state space models. Empirical results show improved parameter estimates compared to existing methods at a significantly reduced computational cost. Supplementary materials including code are available.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/18/2020

Score-Based Parameter Estimation for a Class of Continuous-Time State Space Models

We consider the problem of parameter estimation for a class of continuou...
research
06/19/2015

Expectation Particle Belief Propagation

We propose an original particle-based implementation of the Loopy Belief...
research
12/08/2022

The Lifebelt Particle Filter for robust estimation from low-valued count data

Particle filtering methods are well developed for continuous state-space...
research
11/09/2022

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

This paper revisits the work of Rauch et al. (1965) and develops a novel...
research
01/08/2021

Spatiotemporal blocking of the bouncy particle sampler for efficient inference in state space models

We propose a novel blocked version of the continuous-time bouncy particl...
research
12/14/2022

Particle-Based Score Estimation for State Space Model Learning in Autonomous Driving

Multi-object state estimation is a fundamental problem for robotic appli...
research
05/23/2017

Efficient and principled score estimation with Nyström kernel exponential families

We propose a fast method with statistical guarantees for learning an exp...

Please sign up or login with your details

Forgot password? Click here to reset