Existing sensitivity analysis approaches are not able to handle efficiently stochastic reaction networks with a large number of parameters and species, which are typical in the modeling and simulation of complex biochemical phenomena. In this paper, a two-step strategy for parametric sensitivity analysis for such systems is proposed, exploiting advantages and synergies between two recently proposed sensitivity analysis methodologies for stochastic dynamics. The first method performs sensitivity analysis of the stochastic dynamics by means of the Fisher Information Matrix on the underlying distribution of the trajectories; the second method is a reduced-variance, finite-difference, gradient-type sensitivity approach relying on stochastic cou...
Sensitivity analysis of biochemical reactions aims at quantifying the dependence of the reaction dyn...
International audienceDetermining the sensitivity of certain system states or outputs to variations ...
Reaction-diffusion models are widely used to study spatially-extended chemical reaction systems. In ...
<div><p>Existing sensitivity analysis approaches are not able to handle efficiently stochastic react...
Background: Stochastic modeling and simulation provide powerful predictive methods for the intrinsic...
Background Stochastic modeling and simulation provide powerful predictive methods for the intrinsic ...
Stochastic models for chemical reaction networks have become very popular in recent years. For such ...
Sensitivity analysis for stochastic chemical reaction networks with multiple time-scales Ankit Gupta...
International audienceDetermining the sensitivity of certain system states or outputs to variations ...
Determining the sensitivity of certain system states or outputs to variations in parameters facilita...
Determining the sensitivity of certain system states or outputs to variations in parameters facilita...
International audienceDetermining the sensitivity of certain system states or outputs to variations ...
Determining the sensitivity of certain system states or outputs to variations in parameters facilita...
Stochastic simulation and modeling play an important role to elucidate the fundamental mechanisms in...
International audienceDetermining the sensitivity of certain system states or outputs to variations ...
Sensitivity analysis of biochemical reactions aims at quantifying the dependence of the reaction dyn...
International audienceDetermining the sensitivity of certain system states or outputs to variations ...
Reaction-diffusion models are widely used to study spatially-extended chemical reaction systems. In ...
<div><p>Existing sensitivity analysis approaches are not able to handle efficiently stochastic react...
Background: Stochastic modeling and simulation provide powerful predictive methods for the intrinsic...
Background Stochastic modeling and simulation provide powerful predictive methods for the intrinsic ...
Stochastic models for chemical reaction networks have become very popular in recent years. For such ...
Sensitivity analysis for stochastic chemical reaction networks with multiple time-scales Ankit Gupta...
International audienceDetermining the sensitivity of certain system states or outputs to variations ...
Determining the sensitivity of certain system states or outputs to variations in parameters facilita...
Determining the sensitivity of certain system states or outputs to variations in parameters facilita...
International audienceDetermining the sensitivity of certain system states or outputs to variations ...
Determining the sensitivity of certain system states or outputs to variations in parameters facilita...
Stochastic simulation and modeling play an important role to elucidate the fundamental mechanisms in...
International audienceDetermining the sensitivity of certain system states or outputs to variations ...
Sensitivity analysis of biochemical reactions aims at quantifying the dependence of the reaction dyn...
International audienceDetermining the sensitivity of certain system states or outputs to variations ...
Reaction-diffusion models are widely used to study spatially-extended chemical reaction systems. In ...