We explore efficient estimation of statistical quantities, particularly rare event probabilities, for stochastic reaction networks. Consequently, we propose an importance sampling (IS) approach to improve the Monte Carlo (MC) estimator efficiency based on an approximate tau-leap scheme. The crucial step in the IS framework is choosing an appropriate change of probability measure to achieve substantial variance reduction. This task is typically challenging and often requires insights into the underlying problem. Therefore, we propose an automated approach to obtain a highly efficient path-dependent measure change based on an original connection in the stochastic reaction network context between finding optimal IS parameters within a class of...
The dominant eigenfunctions of the Koopman operator characterize the metastabilities and slow-timesc...
The author proposes stochastic approximation methods of finding the optimal measure change by the ex...
Discrete and stochastic models in systems biology, such as biochemical reaction networks, can be mod...
We explore efficient estimation of statistical quantities, particularly rare event probabilities, fo...
The multilevel Monte Carlo (MLMC) method for continuous-time Markov chains, first introduced by Ande...
ABSTRACT We propose an adaptive importance sampling scheme for the simulation of rare events when t...
We explore the use of Array-RQMC, a randomized quasi-Monte Carlo method designed for the simulation ...
We describe an adaptive importance sampling algorithm for rare events that is based on a dual stocha...
The stochastic reaction network is widely used to model stochastic processes in physics, chemistry a...
In this article we study the connection of stochastic optimal control and reinforcement learning. Ou...
This paper addresses the Monte Carlo approximation of posterior probability distributions. In partic...
An exact method for stochastic simulation of chemical reaction networks, which accelerates the stoch...
The behavior of some stochastic chemical reaction networks is largely unaffected by slight inaccurac...
3siStochastic simulation is a widely used method for estimating quantities in models of chemical rea...
Computational techniques provide invaluable tools for developing a quantitative understanding the co...
The dominant eigenfunctions of the Koopman operator characterize the metastabilities and slow-timesc...
The author proposes stochastic approximation methods of finding the optimal measure change by the ex...
Discrete and stochastic models in systems biology, such as biochemical reaction networks, can be mod...
We explore efficient estimation of statistical quantities, particularly rare event probabilities, fo...
The multilevel Monte Carlo (MLMC) method for continuous-time Markov chains, first introduced by Ande...
ABSTRACT We propose an adaptive importance sampling scheme for the simulation of rare events when t...
We explore the use of Array-RQMC, a randomized quasi-Monte Carlo method designed for the simulation ...
We describe an adaptive importance sampling algorithm for rare events that is based on a dual stocha...
The stochastic reaction network is widely used to model stochastic processes in physics, chemistry a...
In this article we study the connection of stochastic optimal control and reinforcement learning. Ou...
This paper addresses the Monte Carlo approximation of posterior probability distributions. In partic...
An exact method for stochastic simulation of chemical reaction networks, which accelerates the stoch...
The behavior of some stochastic chemical reaction networks is largely unaffected by slight inaccurac...
3siStochastic simulation is a widely used method for estimating quantities in models of chemical rea...
Computational techniques provide invaluable tools for developing a quantitative understanding the co...
The dominant eigenfunctions of the Koopman operator characterize the metastabilities and slow-timesc...
The author proposes stochastic approximation methods of finding the optimal measure change by the ex...
Discrete and stochastic models in systems biology, such as biochemical reaction networks, can be mod...