Identification of Gaussian Process State-Space Models with Particle Stochastic Approximation EM

12/17/2013
by   Roger Frigola, et al.
0

Gaussian process state-space models (GP-SSMs) are a very flexible family of models of nonlinear dynamical systems. They comprise a Bayesian nonparametric representation of the dynamics of the system and additional (hyper-)parameters governing the properties of this nonparametric representation. The Bayesian formalism enables systematic reasoning about the uncertainty in the system dynamics. We present an approach to maximum likelihood identification of the parameters in GP-SSMs, while retaining the full nonparametric description of the dynamics. The method is based on a stochastic approximation version of the EM algorithm that employs recent developments in particle Markov chain Monte Carlo for efficient identification.

READ FULL TEXT
research
06/12/2013

Bayesian Inference and Learning in Gaussian Process State-Space Models with Particle MCMC

State-space models are successfully used in many areas of science, engin...
research
06/25/2018

Learning dynamical systems with particle stochastic approximation EM

We present the particle stochastic approximation EM (PSAEM) algorithm fo...
research
09/25/2014

Identification of jump Markov linear models using particle filters

Jump Markov linear models consists of a finite number of linear state sp...
research
06/07/2015

Computationally Efficient Bayesian Learning of Gaussian Process State Space Models

Gaussian processes allow for flexible specification of prior assumptions...
research
04/27/2018

Persistent Monitoring of Stochastic Spatio-temporal Phenomena with a Small Team of Robots

This paper presents a solution for persistent monitoring of real-world s...
research
04/25/2021

System identification using Bayesian neural networks with nonparametric noise models

System identification is of special interest in science and engineering....

Please sign up or login with your details

Forgot password? Click here to reset