Unbiased estimate of forces from measured correlation functions, including the case of strong multiplicative noise
- 1 January 1992
- journal article
- research article
- Published by Wiley in Annalen der Physik
- Vol. 504 (6) , 452-459
- https://doi.org/10.1002/andp.19925040607
Abstract
Starting from appropriate short‐time correlation function measurements, we propose a dynamical “learning” method to derive the deterministic and stochastic forces underlying an observed process, even if this process contains strong multiplicative noise. To do this we extend the ideas of our previous paper [1] to establish mathematical relationships in this more general case between the joint distribution function of the process and its corresponding Ito‐Langevin equation. A numerical example for a simulated process containing strong multiplicative noise shows good agreement with the theory.Keywords
This publication has 9 references indexed in Scilit:
- Unbiased determination of forces causing observed processesZeitschrift für Physik B Condensed Matter, 1992
- Information and Self-OrganizationPublished by Springer Nature ,1988
- The maximum entropy principle for non-equilibrium phase transitions: Determination of order parameters, slaved modes, and emerging patternsZeitschrift für Physik B Condensed Matter, 1986
- A new access to path integrals and Fokker Planck equations via the maximum calibre principleZeitschrift für Physik B Condensed Matter, 1986
- Application of the maximum information entropy principle to selforganizing systemsZeitschrift für Physik B Condensed Matter, 1985
- Functional IntegrationPublished by Springer Nature ,1980
- Multiplicative stochastic processes in statistical physicsPhysical Review A, 1979
- Statistical Theory of Instabilities in Stationary Nonequilibrium Systems with Applications to Lasers and Nonlinear OpticsPublished by Springer Nature ,1973
- Information Theory and Statistical MechanicsPhysical Review B, 1957