Towards effective dynamics in complex systems by Markov kernel approximation

Christof Schütte; Tobias Jahnke

ESAIM: Mathematical Modelling and Numerical Analysis (2009)

  • Volume: 43, Issue: 4, page 721-742
  • ISSN: 0764-583X

Abstract

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Many complex systems occurring in various application share the property that the underlying Markov process remains in certain regions of the state space for long times, and that transitions between such metastable sets occur only rarely. Often the dynamics within each metastable set is of minor importance, but the transitions between these sets are crucial for the behavior and the understanding of the system. Since simulations of the original process are usually prohibitively expensive, the effective dynamics of the system, i.e. the switching between metastable sets, has to be approximated in a reliable way. This is usually done by computing the dominant eigenvectors and eigenvalues of the transfer operator associated to the Markov process. In many real applications, however, the matrix representing the spatially discretized transfer operator can be extremely large, such that approximating eigenvectors and eigenvalues is a computationally critical problem. In this article we present a novel method to determine the effective dynamics via the transfer operator without computing its dominant spectral elements. The main idea is that a time series of the process allows to approximate the sampling kernel of the process, which is an integral kernel closely related to the transition function of the transfer operator. Metastability is taken into account by representing the approximative sampling kernel by a linear combination of kernels each of which represents the process on one of the metastable sets. The effect of the approximation error on the dynamics of the system is discussed, and the potential of the new approach is illustrated by numerical examples.

How to cite

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Schütte, Christof, and Jahnke, Tobias. "Towards effective dynamics in complex systems by Markov kernel approximation." ESAIM: Mathematical Modelling and Numerical Analysis 43.4 (2009): 721-742. <http://eudml.org/doc/250550>.

@article{Schütte2009,
abstract = { Many complex systems occurring in various application share the property that the underlying Markov process remains in certain regions of the state space for long times, and that transitions between such metastable sets occur only rarely. Often the dynamics within each metastable set is of minor importance, but the transitions between these sets are crucial for the behavior and the understanding of the system. Since simulations of the original process are usually prohibitively expensive, the effective dynamics of the system, i.e. the switching between metastable sets, has to be approximated in a reliable way. This is usually done by computing the dominant eigenvectors and eigenvalues of the transfer operator associated to the Markov process. In many real applications, however, the matrix representing the spatially discretized transfer operator can be extremely large, such that approximating eigenvectors and eigenvalues is a computationally critical problem. In this article we present a novel method to determine the effective dynamics via the transfer operator without computing its dominant spectral elements. The main idea is that a time series of the process allows to approximate the sampling kernel of the process, which is an integral kernel closely related to the transition function of the transfer operator. Metastability is taken into account by representing the approximative sampling kernel by a linear combination of kernels each of which represents the process on one of the metastable sets. The effect of the approximation error on the dynamics of the system is discussed, and the potential of the new approach is illustrated by numerical examples. },
author = {Schütte, Christof, Jahnke, Tobias},
journal = {ESAIM: Mathematical Modelling and Numerical Analysis},
keywords = {Effective dynamics; complex systems; Markov process; metastability; transfer operators; model reduction; mixture models.; effective dynamics; mixture models},
language = {eng},
month = {7},
number = {4},
pages = {721-742},
publisher = {EDP Sciences},
title = {Towards effective dynamics in complex systems by Markov kernel approximation},
url = {http://eudml.org/doc/250550},
volume = {43},
year = {2009},
}

TY - JOUR
AU - Schütte, Christof
AU - Jahnke, Tobias
TI - Towards effective dynamics in complex systems by Markov kernel approximation
JO - ESAIM: Mathematical Modelling and Numerical Analysis
DA - 2009/7//
PB - EDP Sciences
VL - 43
IS - 4
SP - 721
EP - 742
AB - Many complex systems occurring in various application share the property that the underlying Markov process remains in certain regions of the state space for long times, and that transitions between such metastable sets occur only rarely. Often the dynamics within each metastable set is of minor importance, but the transitions between these sets are crucial for the behavior and the understanding of the system. Since simulations of the original process are usually prohibitively expensive, the effective dynamics of the system, i.e. the switching between metastable sets, has to be approximated in a reliable way. This is usually done by computing the dominant eigenvectors and eigenvalues of the transfer operator associated to the Markov process. In many real applications, however, the matrix representing the spatially discretized transfer operator can be extremely large, such that approximating eigenvectors and eigenvalues is a computationally critical problem. In this article we present a novel method to determine the effective dynamics via the transfer operator without computing its dominant spectral elements. The main idea is that a time series of the process allows to approximate the sampling kernel of the process, which is an integral kernel closely related to the transition function of the transfer operator. Metastability is taken into account by representing the approximative sampling kernel by a linear combination of kernels each of which represents the process on one of the metastable sets. The effect of the approximation error on the dynamics of the system is discussed, and the potential of the new approach is illustrated by numerical examples.
LA - eng
KW - Effective dynamics; complex systems; Markov process; metastability; transfer operators; model reduction; mixture models.; effective dynamics; mixture models
UR - http://eudml.org/doc/250550
ER -

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