Simulation experiments involve various sub-tasks, e.g., parameter optimization, simulation execution, or output data analysis. Many algorithms can be applied to such tasks, but their performance depends on the given problem. Steady state estimation in systems biology is a typical example for this: several estimators have been proposed, each with its own (dis-)advantages. Experimenters, therefore, must choose from the available options, even though they may not be aware of the consequences. To support those users, we propose a general scheme to aggregate such algorithms to so-called synthetic problem solvers, which exploit algorithm differences to improve overall performance. Our approach subsumes various aggregation mechanisms, supports aut...
developed to solve system design problems which can not be expressed in explicit analytical or mathe...
Computing the equilibrium properties of complex systems, such as free energy differences, is often h...
When designing or developing optimization algorithms, test functions are crucial to evaluate perfor...
<div><p>Simulation experiments involve various sub-tasks, e.g., parameter optimization, simulation e...
Often in simulation procedures are not proposed unless they are supported by a strong mathematical b...
We develop theory and methodology to estimate the variance of the sample mean of general steady-stat...
Gillespie’s direct method is a stochastic simulation algorithm that may be used to calculate the ste...
In systems biology, biological phenomena are often modeled by Ordinary Differential Equations (ODEs)...
The credibility of the final results from stochastic simulation has had limited discussion in the si...
Whether it is the signaling mechanisms behind immune cells or the change in animal populations, mech...
Benchmark experiments are required to test, compare, tune, and understand optimization algorithms. I...
This paper reviews statistical methods for analyzing output data from computer simulations of single...
Problem statement. Constructing a computational model for a biological sys-tem consists of two main ...
One of the central elements in systems biology is the interaction between mathematical modeling and ...
In this thesis, we present and analyze three algorithms that are designed to make computer simulatio...
developed to solve system design problems which can not be expressed in explicit analytical or mathe...
Computing the equilibrium properties of complex systems, such as free energy differences, is often h...
When designing or developing optimization algorithms, test functions are crucial to evaluate perfor...
<div><p>Simulation experiments involve various sub-tasks, e.g., parameter optimization, simulation e...
Often in simulation procedures are not proposed unless they are supported by a strong mathematical b...
We develop theory and methodology to estimate the variance of the sample mean of general steady-stat...
Gillespie’s direct method is a stochastic simulation algorithm that may be used to calculate the ste...
In systems biology, biological phenomena are often modeled by Ordinary Differential Equations (ODEs)...
The credibility of the final results from stochastic simulation has had limited discussion in the si...
Whether it is the signaling mechanisms behind immune cells or the change in animal populations, mech...
Benchmark experiments are required to test, compare, tune, and understand optimization algorithms. I...
This paper reviews statistical methods for analyzing output data from computer simulations of single...
Problem statement. Constructing a computational model for a biological sys-tem consists of two main ...
One of the central elements in systems biology is the interaction between mathematical modeling and ...
In this thesis, we present and analyze three algorithms that are designed to make computer simulatio...
developed to solve system design problems which can not be expressed in explicit analytical or mathe...
Computing the equilibrium properties of complex systems, such as free energy differences, is often h...
When designing or developing optimization algorithms, test functions are crucial to evaluate perfor...