In this work, we consider the problem of estimating summary statistics to characterise biochemical reaction networks of interest. Such networks are often described using the framework of the Chemical Master Equation (CME). For physically-realistic models, the CME is widely considered to be analytically intractable. A variety of Monte Carlo algorithms have therefore been developed to explore the dynamics of such networks empirically. Amongst them is the multi-level method, which uses estimates from multiple ensembles of sample paths of different accuracies to estimate a summary statistic of interest. In this work, we develop the multi-level method in two directions: (1) to increase the robustness, reliability and performance of the multi-lev...
BACKGROUND: A fundamental issue in systems biology is how to design simplified mathematical models f...
Stochastic methods for simulating biochemical reaction networks often provide a more realistic descr...
Background: In recent years, several stochastic simulation algorithms have been developed to generat...
In this work, we consider the problem of estimating summary statistics to characterise biochemical r...
Discrete-state, continuous-time Markov models are becoming commonplace in the modelling of biochemic...
Biochemical reaction networks are often modelled using discrete-state, continuous-time Markov chains...
Stochastic models of biochemical reaction networks are often more realistic descriptions of cellular...
The multi-level method for discrete-state systems, first introduced by Anderson and Higham (SIAM Mul...
We show how to extend a recently proposed multi-level Monte Carlo approach to the continuous time Ma...
Stochastic models of biochemical reaction networks are often more realistic descriptions of cellular...
The use of rate models for networks of stochastic reactions is frequently used to comprehend the mac...
Numerical simulation of stochastic biochemical reaction networks has received much attention in the ...
AbstractIt is often the case in modeling biological phenomena that the structure and the effect of t...
The biochemical models describing complex and dynamic metabolic systems are typically multi-parametr...
A precise quantification of the effect of perturbations in a metabolic network depends on explicit k...
BACKGROUND: A fundamental issue in systems biology is how to design simplified mathematical models f...
Stochastic methods for simulating biochemical reaction networks often provide a more realistic descr...
Background: In recent years, several stochastic simulation algorithms have been developed to generat...
In this work, we consider the problem of estimating summary statistics to characterise biochemical r...
Discrete-state, continuous-time Markov models are becoming commonplace in the modelling of biochemic...
Biochemical reaction networks are often modelled using discrete-state, continuous-time Markov chains...
Stochastic models of biochemical reaction networks are often more realistic descriptions of cellular...
The multi-level method for discrete-state systems, first introduced by Anderson and Higham (SIAM Mul...
We show how to extend a recently proposed multi-level Monte Carlo approach to the continuous time Ma...
Stochastic models of biochemical reaction networks are often more realistic descriptions of cellular...
The use of rate models for networks of stochastic reactions is frequently used to comprehend the mac...
Numerical simulation of stochastic biochemical reaction networks has received much attention in the ...
AbstractIt is often the case in modeling biological phenomena that the structure and the effect of t...
The biochemical models describing complex and dynamic metabolic systems are typically multi-parametr...
A precise quantification of the effect of perturbations in a metabolic network depends on explicit k...
BACKGROUND: A fundamental issue in systems biology is how to design simplified mathematical models f...
Stochastic methods for simulating biochemical reaction networks often provide a more realistic descr...
Background: In recent years, several stochastic simulation algorithms have been developed to generat...