Partial differential equation (PDE) models are widely used in engineering and natural sciences to describe spatio-temporal processes. The parameters of the considered processes are often unknown and have to be estimated from experimental data. Due to partial observations and measurement noise, these parameter estimates are subject to uncertainty. This uncertainty can be assessed using profile likelihoods, a reliable but computationally intensive approach. In this paper, we present the integration based approach for the profile likelihood calculation developed by (Chen and Jennrich 2002 J. Comput. Graph. Stat. 11 714-32) and adapt it to inverse problems with PDE constraints. While existing methods for profile likelihood calculation in parame...
Many physical phenomena are modeled by parametrized PDEs. The poor knowledge on the involv...
A common problem in model verification is to determine the values of model parameters that provide t...
There is a long history for differential equations to be utilized to model dynamic pro- cesses in ma...
Partial differential equation (PDE) models are commonly used to model complex dynamic systems in app...
In this paper, we use an industrial data set with an ordinary differential equation (ODE) model to d...
The widespread use of ordinary differential equation (ODE) models has long been underrepresented in ...
Résumé : Many physical phenomena are modeled by parametrized PDEs. The poor knowledge on the involve...
Rational selection of experimental readout and intervention sites for reducing uncertainties in comp...
Motivation: Parameter estimation methods for ordinary differential equation (ODE) models of biologic...
The identification of the spatially dependent parameters in Partial Differential Equations (PDEs) is...
We compute profile likelihoods for a stochastic model of diffusive transport motivated by experiment...
Many physical phenomena are modeled by parametrized PDEs. The poor knowledge on the involv...
Parameter estimation problems in image based systems biology face problems such as partial observati...
International audienceMany phenomena are modeled by deterministic differential equations , whereas t...
International audienceMany physical phenomena are modeled by parametrized PDEs. The poor knowledge o...
Many physical phenomena are modeled by parametrized PDEs. The poor knowledge on the involv...
A common problem in model verification is to determine the values of model parameters that provide t...
There is a long history for differential equations to be utilized to model dynamic pro- cesses in ma...
Partial differential equation (PDE) models are commonly used to model complex dynamic systems in app...
In this paper, we use an industrial data set with an ordinary differential equation (ODE) model to d...
The widespread use of ordinary differential equation (ODE) models has long been underrepresented in ...
Résumé : Many physical phenomena are modeled by parametrized PDEs. The poor knowledge on the involve...
Rational selection of experimental readout and intervention sites for reducing uncertainties in comp...
Motivation: Parameter estimation methods for ordinary differential equation (ODE) models of biologic...
The identification of the spatially dependent parameters in Partial Differential Equations (PDEs) is...
We compute profile likelihoods for a stochastic model of diffusive transport motivated by experiment...
Many physical phenomena are modeled by parametrized PDEs. The poor knowledge on the involv...
Parameter estimation problems in image based systems biology face problems such as partial observati...
International audienceMany phenomena are modeled by deterministic differential equations , whereas t...
International audienceMany physical phenomena are modeled by parametrized PDEs. The poor knowledge o...
Many physical phenomena are modeled by parametrized PDEs. The poor knowledge on the involv...
A common problem in model verification is to determine the values of model parameters that provide t...
There is a long history for differential equations to be utilized to model dynamic pro- cesses in ma...