Stochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analysed through solving the Chemical Master Equation (CME) or performing extensive simulations. Analysing stochasticity is often needed, particularly when some molecules occur in low numbers. Unfortunately, both approaches become infeasible if the system is complex and/or it cannot be ensured that initial populations are small. We develop a probabilistic logic for CRNs that enables stochastic analysis of the evolution of populations of molecular species. We present an approximate model checking algorithm based on the Linear Noise Approximation (LNA) of the CME, whose computational complexity is independent of the population size of each species and polynomial i...
We provide a short review of stochastic modeling in chemical reaction networks for mathematical and ...
We provide a short review of stochastic modeling in chemical reaction networks for mathematical and ...
<div><p>Reaction networks are systems in which the populations of a finite number of species evolve ...
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...
AbstractStochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analyzed thr...
Abstract. Stochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analysed t...
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...
The Linear Noise Approximation (LNA) is a continuous approximation of the CME, which improves scalab...
The Linear Noise Approximation (LNA) is a continuous approximation of the CME, which improves scalab...
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...
We consider inference for the reaction rates in discretely observed networks such as those found in ...
We study time-bounded probabilistic reachability for Chemical Reaction Networks (CRNs) using the Lin...
We provide a short review of stochastic modeling in chemical reaction networks for mathematical and ...
We provide a short review of stochastic modeling in chemical reaction networks for mathematical and ...
<div><p>Reaction networks are systems in which the populations of a finite number of species evolve ...
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...
AbstractStochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analyzed thr...
Abstract. Stochastic evolution of Chemical Reactions Networks (CRNs) over time is usually analysed t...
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...
The Linear Noise Approximation (LNA) is a continuous approximation of the CME, which improves scalab...
The Linear Noise Approximation (LNA) is a continuous approximation of the CME, which improves scalab...
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...
We consider inference for the reaction rates in discretely observed networks such as those found in ...
We study time-bounded probabilistic reachability for Chemical Reaction Networks (CRNs) using the Lin...
We provide a short review of stochastic modeling in chemical reaction networks for mathematical and ...
We provide a short review of stochastic modeling in chemical reaction networks for mathematical and ...
<div><p>Reaction networks are systems in which the populations of a finite number of species evolve ...