Diffusion models arising in analysis of large biochemical models and other complex systems are typically far too complex for exact solution, or even meaningful simulation. The purpose of this paper is to develop foundations for model reduction, and new modeling techniques for diffusion models. These foundations are all based upon recent spectral theory of Markov processes. The main assumption imposed is V-uniform ergodicity of the process. This is equivalent to any common formulation of exponential ergodicity, and is known to be far weaker than the Donsker-Varadahn conditions in large deviations theory. Under this assumption it is shown that the associated semigroup admits a spectral gap in a weighted L1 -norm, and real eigenfunctions provi...
Abstract: We study a large class of reversible Markov chains with discrete state space and transitio...
This thesis represents a small contribution to our understanding of metastable patterns in various s...
Motivated by queues with many-servers, we study Brownian steady-state approximations for continuous ...
International audienceAbstract The large deviations at level 2.5 are applied to Markov processes wit...
Consider finite state space irreducible and absorbing Markov processes. A general spectral criterion...
Consider finite state space irreducible and absorbing Markov processes. A general spectral criterion...
We consider a continuous-time Markov process on a large continuous or discrete state space. The proc...
In this paper we review and discuss results on metastability. We consider ergodic aperiodic Markov c...
Consider finite state space irreducible and absorbing Markov processes. A general spectral criterion...
Consider finite state space irreducible and absorbing Markov processes. A general spectral criterion...
We consider Markov processes on large state spaces and want to find low-dimensional structure-preser...
We consider a continuous-time, ergodic Markov process on a large continuous or discrete state space...
This article considers a class of metastable non-reversible diffusion processes whose invariant meas...
We develop a potential theoretic approach to the problem of metastability for reversible diffusion p...
The slow processes of molecular dynamics (MD) simulations—governed by dominant eigenvalues and eigen...
Abstract: We study a large class of reversible Markov chains with discrete state space and transitio...
This thesis represents a small contribution to our understanding of metastable patterns in various s...
Motivated by queues with many-servers, we study Brownian steady-state approximations for continuous ...
International audienceAbstract The large deviations at level 2.5 are applied to Markov processes wit...
Consider finite state space irreducible and absorbing Markov processes. A general spectral criterion...
Consider finite state space irreducible and absorbing Markov processes. A general spectral criterion...
We consider a continuous-time Markov process on a large continuous or discrete state space. The proc...
In this paper we review and discuss results on metastability. We consider ergodic aperiodic Markov c...
Consider finite state space irreducible and absorbing Markov processes. A general spectral criterion...
Consider finite state space irreducible and absorbing Markov processes. A general spectral criterion...
We consider Markov processes on large state spaces and want to find low-dimensional structure-preser...
We consider a continuous-time, ergodic Markov process on a large continuous or discrete state space...
This article considers a class of metastable non-reversible diffusion processes whose invariant meas...
We develop a potential theoretic approach to the problem of metastability for reversible diffusion p...
The slow processes of molecular dynamics (MD) simulations—governed by dominant eigenvalues and eigen...
Abstract: We study a large class of reversible Markov chains with discrete state space and transitio...
This thesis represents a small contribution to our understanding of metastable patterns in various s...
Motivated by queues with many-servers, we study Brownian steady-state approximations for continuous ...