Variational inference for diffusion processes


Autoria(s): Archambeau, Cédric; Opper, Manfred; Shen, Yuan; Cornford, Dan; Shawe-Taylor, John
Contribuinte(s)

Platt, J.C.

Koller, D.

Singer, Y.

Roweis, S.

Data(s)

2008

Resumo

Diffusion processes are a family of continuous-time continuous-state stochastic processes that are in general only partially observed. The joint estimation of the forcing parameters and the system noise (volatility) in these dynamical systems is a crucial, but non-trivial task, especially when the system is nonlinear and multimodal. We propose a variational treatment of diffusion processes, which allows us to compute type II maximum likelihood estimates of the parameters by simple gradient techniques and which is computationally less demanding than most MCMC approaches. We also show how a cheap estimate of the posterior over the parameters can be constructed based on the variational free energy.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/10304/1/Archambeau2007NIPS.pdf

Archambeau, Cédric; Opper, Manfred; Shen, Yuan; Cornford, Dan and Shawe-Taylor, John (2008). Variational inference for diffusion processes. IN: Advances in Neural Information Processing Systems 20. Platt, J.C.; Koller, D.; Singer, Y. and Roweis, S. (eds) Advances In Neural Information Processing Systems, 20 . Cambridge, Massachusetts (US): MIT.

Publicador

MIT

Relação

http://eprints.aston.ac.uk/10304/

Tipo

Book Section

NonPeerReviewed