We study time-bounded probabilistic reachability for Chemical Reaction Networks (CRNs) using the Linear Noise Approximation (LNA). The LNA approximates the discrete stochastic semantics of a CRN in terms of a continuous space Gaussian process. We consider reachability regions expressed as intersections of finitely many linear inequalities over the species of a CRN. This restriction allows us to derive an abstraction of the original Gaussian process as a time-inhomogeneous discrete-time Markov chain (DTMC), such that the dimensionality of its state space is independent of the number of species of the CRN, ameliorating the state space explosion problem. We formulate an algorithm for approximate computation of time-bounded reachability probabi...
We consider probabilistic model checking for continuous-time Markov chains (CTMCs) induced from Stoc...
AbstractStochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analyzed thr...
Abstract — The impact of noise on cellular networks and its interplay with their rich dynamics are i...
Living systems are inherently stochastic and operate in a noisy environment: in single cells, react...
Living systems are inherently stochastic and operate in a noisy environment: in single cells, reacti...
Abstract. Stochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analysed t...
AbstractStochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analyzed thr...
Stochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analyzed through sol...
Stochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analyzed through sol...
Abstract. Stochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analysed t...
Stochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analysed through sol...
We consider inference for the reaction rates in discretely observed networks such as those found in ...
We consider probabilistic model checking for continuous-time Markov chains (CTMCs) induced from Stoc...
We consider probabilistic model checking for continuous-time Markov chains (CTMCs) induced from Stoc...
4siWe consider probabilistic model checking for continuous-time Markov chains (CTMCs) induced from S...
We consider probabilistic model checking for continuous-time Markov chains (CTMCs) induced from Stoc...
AbstractStochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analyzed thr...
Abstract — The impact of noise on cellular networks and its interplay with their rich dynamics are i...
Living systems are inherently stochastic and operate in a noisy environment: in single cells, react...
Living systems are inherently stochastic and operate in a noisy environment: in single cells, reacti...
Abstract. Stochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analysed t...
AbstractStochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analyzed thr...
Stochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analyzed through sol...
Stochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analyzed through sol...
Abstract. Stochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analysed t...
Stochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analysed through sol...
We consider inference for the reaction rates in discretely observed networks such as those found in ...
We consider probabilistic model checking for continuous-time Markov chains (CTMCs) induced from Stoc...
We consider probabilistic model checking for continuous-time Markov chains (CTMCs) induced from Stoc...
4siWe consider probabilistic model checking for continuous-time Markov chains (CTMCs) induced from S...
We consider probabilistic model checking for continuous-time Markov chains (CTMCs) induced from Stoc...
AbstractStochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analyzed thr...
Abstract — The impact of noise on cellular networks and its interplay with their rich dynamics are i...