Structure Learning in Stochastic Non-linear Dynamical Systems
Abstract
A great many systems can be modeled in the non-linear dynamical systems framework, as x˙ = f(x) + ξ(t), where f(x) is the potential function for the system, and ξ(t) is the driving noise. Modeling the potential using a set of basis functions, we derive the posterior for the basis coefficients. A more challenging problem is to determine the set of basis functions that are required to model a particular system. We show that using the Bayesian Information Criteria (BIC) to rank models, and the beam search technique, that we can accurately determine the structure of simple non-linear dynamical system models, and the structure of the coupling between non-linear dynamical systems where the individual systems are known. This last case has important ecological applications, for example in predator-prey systems, where the very structure of the coupling between predator-prey pairs can have great ecological significance.
- Publication:
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AGU Fall Meeting Abstracts
- Pub Date:
- December 2005
- Bibcode:
- 2005AGUFMIN41A0311M
- Keywords:
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- 0430 Computational methods and data processing;
- 0439 Ecosystems;
- structure and dynamics (4815);
- 0466 Modeling;
- 0491 Food webs and trophodynamics (4817);
- 0520 Data analysis: algorithms and implementation