The stochastic simulation algorithm (SSA) and the corresponding Monte Carlo (MC) method are among the most common approaches for studying stochastic processes. They relies on knowledge of interevent probability density functions (PDFs) and on information about dependencies between all possible events. Analytical representations of a PDF are difficult to specify in advance, in many real life applications. Knowing the shapes of PDFs, and using experimental data, different optimization schemes can be applied in order to evaluate probability density functions and, therefore, the properties of the studied system. Such methods, however, are computationally demanding, and often not feasible. We show that, in the case where experimentally accessed ...
We present a simple algorithm for the simulation of stiff, discrete-space, continuous-time Markov pr...
International audienceWe investigate in this paper an alternative method to simulation based recursi...
Bayesian methods provide the means for studying probabilistic models of linear as well as non-linear...
The stochastic simulation algorithm (SSA) and the corresponding Monte Carlo (MC) method are among th...
This thesis provides an overview of stochastic optimization (SP) problems and looks at how the Sampl...
Background: Mathematical models are used to gain an integrative understanding of biochemical process...
147 p.While probabilistic modelling has been widely used in the last decades, the quantitative predi...
To monitor or control a stochastic dynamic system, we need to reason about its current state. Exact ...
Stochastic simulation of coupled chemical reactions is often computationally intensive, especially i...
Computational techniques provide invaluable tools for developing a quantitative understanding the co...
Lorsqu’une grandeur d’intérêt ne peut être directement mesurée, il est fréquent de procéder à l’obse...
We present and analyze a micro/macro acceleration technique for the Monte Carlo simulation of stocha...
Several computational applications in stochastic operations research are presented, where, for each ...
AbstractWe present a comparison of the performance, relative strengths and relative weaknesses of st...
The biochemical models describing complex and dynamic metabolic systems are typically multi-parametr...
We present a simple algorithm for the simulation of stiff, discrete-space, continuous-time Markov pr...
International audienceWe investigate in this paper an alternative method to simulation based recursi...
Bayesian methods provide the means for studying probabilistic models of linear as well as non-linear...
The stochastic simulation algorithm (SSA) and the corresponding Monte Carlo (MC) method are among th...
This thesis provides an overview of stochastic optimization (SP) problems and looks at how the Sampl...
Background: Mathematical models are used to gain an integrative understanding of biochemical process...
147 p.While probabilistic modelling has been widely used in the last decades, the quantitative predi...
To monitor or control a stochastic dynamic system, we need to reason about its current state. Exact ...
Stochastic simulation of coupled chemical reactions is often computationally intensive, especially i...
Computational techniques provide invaluable tools for developing a quantitative understanding the co...
Lorsqu’une grandeur d’intérêt ne peut être directement mesurée, il est fréquent de procéder à l’obse...
We present and analyze a micro/macro acceleration technique for the Monte Carlo simulation of stocha...
Several computational applications in stochastic operations research are presented, where, for each ...
AbstractWe present a comparison of the performance, relative strengths and relative weaknesses of st...
The biochemical models describing complex and dynamic metabolic systems are typically multi-parametr...
We present a simple algorithm for the simulation of stiff, discrete-space, continuous-time Markov pr...
International audienceWe investigate in this paper an alternative method to simulation based recursi...
Bayesian methods provide the means for studying probabilistic models of linear as well as non-linear...