We describe a simple form of importance sampling designed to bound and compute large-deviation rate functions for time-extensive dynamical observables in continuous-time Markov chains. We start with a model, defined by a set of rates, and a time-extensive dynamical observable. We construct a reference model, a variational ansatz for the behavior of the original model conditioned on atypical values of the observable. Direct simulation of the reference model provides an upper bound on the large-deviation rate function associated with the original model, an estimate of the tightness of the bound, and, if the ansatz is chosen well, the exact rate function. The exact rare behavior of the original model does not need to be known in advance. We us...
12 pages, 1 figure. First part of pair of companion papers, Part II being arXiv:1607.08804The Giardi...
Dynamical systems with small noise can exhibit important rare events on long timescales. For systems...
In this dissertation, we study large deviations problems for stochastic dynamical systems. First, we...
We describe a simple form of importance sampling designed to bound and compute large-deviation rate ...
We describe a framework to reduce the computational effort to evaluate large deviation functions of ...
International audienceWe introduce and test an algorithm that adaptively estimates large deviation f...
Large deviation functions contain information on the stability and response of systems driven into n...
We propose a general framework to simulate stochastic trajectories with arbitrarily long memory depe...
We introduce a numerical procedure to evaluate directly the probabilities of large deviations of phy...
12 pages, 11 figures. Second part of pair of companion papers, following Part I arXiv:1607.04752Inte...
We prove a large-deviation principle (LDP) for the sample paths of jump Markov processes in the smal...
We prove a large-deviation principle (LDP) for the sample paths of jump Markov processes in the smal...
A dynamic large deviations principle for a countable reaction network including coagulation--fragmen...
PhD Theses.In this thesis we study rare events in di erent nonequilibrium stochastic models both i...
We describe a simple method that can be used to sample the rare fluctuations of discrete-time Markov...
12 pages, 1 figure. First part of pair of companion papers, Part II being arXiv:1607.08804The Giardi...
Dynamical systems with small noise can exhibit important rare events on long timescales. For systems...
In this dissertation, we study large deviations problems for stochastic dynamical systems. First, we...
We describe a simple form of importance sampling designed to bound and compute large-deviation rate ...
We describe a framework to reduce the computational effort to evaluate large deviation functions of ...
International audienceWe introduce and test an algorithm that adaptively estimates large deviation f...
Large deviation functions contain information on the stability and response of systems driven into n...
We propose a general framework to simulate stochastic trajectories with arbitrarily long memory depe...
We introduce a numerical procedure to evaluate directly the probabilities of large deviations of phy...
12 pages, 11 figures. Second part of pair of companion papers, following Part I arXiv:1607.04752Inte...
We prove a large-deviation principle (LDP) for the sample paths of jump Markov processes in the smal...
We prove a large-deviation principle (LDP) for the sample paths of jump Markov processes in the smal...
A dynamic large deviations principle for a countable reaction network including coagulation--fragmen...
PhD Theses.In this thesis we study rare events in di erent nonequilibrium stochastic models both i...
We describe a simple method that can be used to sample the rare fluctuations of discrete-time Markov...
12 pages, 1 figure. First part of pair of companion papers, Part II being arXiv:1607.08804The Giardi...
Dynamical systems with small noise can exhibit important rare events on long timescales. For systems...
In this dissertation, we study large deviations problems for stochastic dynamical systems. First, we...