Motivation: Mathematical models are nowadays important tools for analyzing dynamics of cellular processes. The unknown model parameters are usually estimated from experimental data. These data often only provide information about the relative changes between conditions, hence, the observables contain scaling parameters. The unknown scaling parameters and corresponding noise parameters have to be inferred along with the dynamic parameters. The nuisance parameters often increase the dimensionality of the estimation problem substantially and cause convergence problems.Results: In this manuscript, we propose a hierarchical optimization approach for estimating the parameters for ordinary differential equation (ODE) models from relative data. Our...
A mathematical model of a dynamical process, often in the form of a system of differential equations...
Models of complex systems often consist of state variables with structurally similar dynamics that d...
Derivative-free optimization can be used to estimate parameters without computing derivatives. As th...
Quantitative dynamic models are widely used to study cellular signal processing. A critical step in ...
We consider parameter estimation in ordinary differential equations (ODEs) from completely observed ...
Motivation: Parameter estimation methods for ordinary differential equation (ODE) models of biologic...
We consider the formulation and solution of the inverse problem that arises when fit- ting systems o...
Ordinary differential equation (ODE) models are a key tool to understand complex mechanisms in syste...
Background: Ordinary differential equation (ODE) models are widely used to describe (bio-)chemical a...
Quantitative dynamical models facilitate the understanding of biological processes and the predictio...
Ordinary differential equation (ODE) models are often used to quantitatively describe and predict th...
Motivation: In recent years, the biological literature has seen a significant increase of reported m...
Developing mathematical models involves joining theory and experimental or observational data. The m...
This article addresses the problem of estimating the parameters of a system of ordinary differential...
<p>Ordinary differential equations (ODEs) are widely used to model the dynamic behavior of a complex...
A mathematical model of a dynamical process, often in the form of a system of differential equations...
Models of complex systems often consist of state variables with structurally similar dynamics that d...
Derivative-free optimization can be used to estimate parameters without computing derivatives. As th...
Quantitative dynamic models are widely used to study cellular signal processing. A critical step in ...
We consider parameter estimation in ordinary differential equations (ODEs) from completely observed ...
Motivation: Parameter estimation methods for ordinary differential equation (ODE) models of biologic...
We consider the formulation and solution of the inverse problem that arises when fit- ting systems o...
Ordinary differential equation (ODE) models are a key tool to understand complex mechanisms in syste...
Background: Ordinary differential equation (ODE) models are widely used to describe (bio-)chemical a...
Quantitative dynamical models facilitate the understanding of biological processes and the predictio...
Ordinary differential equation (ODE) models are often used to quantitatively describe and predict th...
Motivation: In recent years, the biological literature has seen a significant increase of reported m...
Developing mathematical models involves joining theory and experimental or observational data. The m...
This article addresses the problem of estimating the parameters of a system of ordinary differential...
<p>Ordinary differential equations (ODEs) are widely used to model the dynamic behavior of a complex...
A mathematical model of a dynamical process, often in the form of a system of differential equations...
Models of complex systems often consist of state variables with structurally similar dynamics that d...
Derivative-free optimization can be used to estimate parameters without computing derivatives. As th...