International audienceBackground: Solutions to stochastic Boolean models are usually estimated by Monte Carlo simulations, but as the state space of these models can be enormous, there is an inherent uncertainty about the accuracy of Monte Carlo estimates and whether simulations have reached all attractors. Moreover, these models have timescale parameters (transition rates) that the probability values of stationary solutions depend on in complex ways, raising the necessity of parameter sensitivity analysis. We address these two issues by an exact calculation method for this class of models. Results: We show that the stationary probability values of the attractors of stochastic (asynchronous) continuous time Boolean models can be exactly cal...
This article presents an algorithm that allows modeling of biological networks in a qualitative fram...
Time- and state-discrete dynamical systems are frequently used to model molecular networks. This pap...
Sensitivity analysis plays an important role in performance optimization of stochastic systems. It p...
International audienceBackground: Solutions to stochastic Boolean models are usually estimated by Mo...
BACKGROUND: Solutions to stochastic Boolean models are usually estimated by Monte Carlo simulations,...
International audienceABSTRACT: Mathematical modeling is used as a Systems Biology tool to answer bi...
Abstract Consider the standard stochastic reaction network model where the dynamics is given by a c...
Continuous-time Markov chains are used to model stochastic systems where transitions can occur at ir...
Abstract. We present a novel and simple method to numerically calculate Fisher Infor-mation Matrices...
We consider probabilistic model checking for continuous-time Markov chains (CTMCs) induced from Stoc...
We show how to extend a recently proposed multi-level Monte Carlo approach to the continuous time Ma...
We present a novel and simple method to numerically calculate Fisher information matrices for stocha...
Stochastic methods for simulating biochemical reaction networks often provide a more realistic descr...
4siWe consider probabilistic model checking for continuous-time Markov chains (CTMCs) induced from S...
Stochastic models for chemical reaction networks have become very popular in recent years. For such ...
This article presents an algorithm that allows modeling of biological networks in a qualitative fram...
Time- and state-discrete dynamical systems are frequently used to model molecular networks. This pap...
Sensitivity analysis plays an important role in performance optimization of stochastic systems. It p...
International audienceBackground: Solutions to stochastic Boolean models are usually estimated by Mo...
BACKGROUND: Solutions to stochastic Boolean models are usually estimated by Monte Carlo simulations,...
International audienceABSTRACT: Mathematical modeling is used as a Systems Biology tool to answer bi...
Abstract Consider the standard stochastic reaction network model where the dynamics is given by a c...
Continuous-time Markov chains are used to model stochastic systems where transitions can occur at ir...
Abstract. We present a novel and simple method to numerically calculate Fisher Infor-mation Matrices...
We consider probabilistic model checking for continuous-time Markov chains (CTMCs) induced from Stoc...
We show how to extend a recently proposed multi-level Monte Carlo approach to the continuous time Ma...
We present a novel and simple method to numerically calculate Fisher information matrices for stocha...
Stochastic methods for simulating biochemical reaction networks often provide a more realistic descr...
4siWe consider probabilistic model checking for continuous-time Markov chains (CTMCs) induced from S...
Stochastic models for chemical reaction networks have become very popular in recent years. For such ...
This article presents an algorithm that allows modeling of biological networks in a qualitative fram...
Time- and state-discrete dynamical systems are frequently used to model molecular networks. This pap...
Sensitivity analysis plays an important role in performance optimization of stochastic systems. It p...