In the field of large deviations for stochastic dynamics, the canonical conditioning of a given Markov process with respect to a given time-local trajectory observable over a large time-window has attracted a lot of interest recently. In the present paper, we analyze the following inverse problem: when two Markov generators are given, is it possible to connect them via some canonical conditioning and to construct the corresponding time-local trajectory observable? We focus on continuous-time Markov processes and obtain the following necessary and sufficient conditions: (i) for continuous-time Markov jump processes, the two generators should involve the same possible elementary jumps in configuration space, i.e. only the values of the corres...
When the unconditioned process is a diffusion submitted to a space-dependent killing rate $k(\vec x)...
AbstractThe process (X, l), where X is a Markov process and l its local time at a regular point b, i...
For boundary-driven non-equilibrium Markov models of non-interacting particles in one dimension, eit...
International audienceAbstract The recent study by De Bruyne et al (2021 J. Stat. Mech. 123204), con...
International audienceWe consider two independent identical diffusion processes that annihilate upon...
International audienceWe consider two independent identical diffusion processes that annihilate upon...
International audienceWe consider two independent identical diffusion processes that annihilate upon...
When the unconditioned process is a diffusion process $X(t)$ of drift $\mu(x)$ and of diffusion coef...
We propose a general framework to simulate stochastic trajectories with arbitrarily long memory depe...
A continuous-time Markov process X can be conditioned to be in a given state at a fixed time T>0 ...
A continuous-time Markov process X can be conditioned to be in a given state at a fixed time T>0 ...
International audienceWe consider the problem of conditioning a Markov process on a rare event and o...
Continuous-time Markov chains are used to model stochastic systems where transitions can occur at ir...
A continuous-time Markov process $X$ can be conditioned to be in a given state at a fixed time $T > ...
International audienceWe consider the problem of conditioning a Markov process on a rare event and o...
When the unconditioned process is a diffusion submitted to a space-dependent killing rate $k(\vec x)...
AbstractThe process (X, l), where X is a Markov process and l its local time at a regular point b, i...
For boundary-driven non-equilibrium Markov models of non-interacting particles in one dimension, eit...
International audienceAbstract The recent study by De Bruyne et al (2021 J. Stat. Mech. 123204), con...
International audienceWe consider two independent identical diffusion processes that annihilate upon...
International audienceWe consider two independent identical diffusion processes that annihilate upon...
International audienceWe consider two independent identical diffusion processes that annihilate upon...
When the unconditioned process is a diffusion process $X(t)$ of drift $\mu(x)$ and of diffusion coef...
We propose a general framework to simulate stochastic trajectories with arbitrarily long memory depe...
A continuous-time Markov process X can be conditioned to be in a given state at a fixed time T>0 ...
A continuous-time Markov process X can be conditioned to be in a given state at a fixed time T>0 ...
International audienceWe consider the problem of conditioning a Markov process on a rare event and o...
Continuous-time Markov chains are used to model stochastic systems where transitions can occur at ir...
A continuous-time Markov process $X$ can be conditioned to be in a given state at a fixed time $T > ...
International audienceWe consider the problem of conditioning a Markov process on a rare event and o...
When the unconditioned process is a diffusion submitted to a space-dependent killing rate $k(\vec x)...
AbstractThe process (X, l), where X is a Markov process and l its local time at a regular point b, i...
For boundary-driven non-equilibrium Markov models of non-interacting particles in one dimension, eit...