Variational mean-field algorithm for efficient inference in large systems of stochastic differential equations


Autoria(s): Vrettas, Michail D.; Opper, Manfred; Cornford, Dan
Data(s)

30/01/2015

Resumo

This work introduces a Gaussian variational mean-field approximation for inference in dynamical systems which can be modeled by ordinary stochastic differential equations. This new approach allows one to express the variational free energy as a functional of the marginal moments of the approximating Gaussian process. A restriction of the moment equations to piecewise polynomial functions, over time, dramatically reduces the complexity of approximate inference for stochastic differential equation models and makes it comparable to that of discrete time hidden Markov models. The algorithm is demonstrated on state and parameter estimation for nonlinear problems with up to 1000 dimensional state vectors and compares the results empirically with various well-known inference methodologies.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/25263/1/Variational_mean_field_algorithm_for_efficient_inference_in_large_systems_of_stochastic_differential_equations.pdf

Vrettas, Michail D.; Opper, Manfred and Cornford, Dan (2015). Variational mean-field algorithm for efficient inference in large systems of stochastic differential equations. Physical Review E, 91 (1),

Relação

http://eprints.aston.ac.uk/25263/

Tipo

Article

PeerReviewed