AbstractModeling an experimental system often results in a number of alternative models that are all justified by the available experimental data. To discriminate among these models, additional experiments are needed. Existing methods for the selection of discriminatory experiments in statistics and in artificial intelligence are often based on an entropy criterion, the so-called information increment. A limitation of these methods is that they are not well-adapted to discriminating models of dynamical systems under conditions of limited measurability. Moreover, there are no generic procedures for computing the information increment of an experiment when the models are qualitative or semi-quantitative. This has motivated the development of ...
Developing mechanistic models has become an integral aspect of systems biology, as has the need to d...
AbstractA novel statistical procedure [S. Zwanzig, Math. Opsforsch. Statist. Ser. Statist.11, 23–47 ...
International audienceThis paper focuses on Bayesian modeling applied to the experimental methodolog...
Modeling an experimental system often results in a number of alternative models that are all justifi...
AbstractModeling an experimental system often results in a number of alternative models that are all...
Modeling an experimental system often results in a number of alternative models that are justified e...
It often occurs that a system can be described by several competing models. In order to distinguish ...
In technical chemistry, systems biology and biotechnology, the construction of predictive models has...
Abstract—Systems biologists are often faced with competing models for a given experimental system. U...
AbstractSystem identification takes a space of possible models and a stream of observational data of...
Mathematical modeling of biochemical processes significantly contributes to a better understanding o...
Despite the ever-increasing interest in understanding biology at the system level, there are several...
Computational models are useful for quantitative elucidation of the dynamical behavior of biological...
Biological systems are often modeled by a set of differential equations. For any given system there ...
Deterministic dynamic models play a crucial role in elucidating the function of biological networks....
Developing mechanistic models has become an integral aspect of systems biology, as has the need to d...
AbstractA novel statistical procedure [S. Zwanzig, Math. Opsforsch. Statist. Ser. Statist.11, 23–47 ...
International audienceThis paper focuses on Bayesian modeling applied to the experimental methodolog...
Modeling an experimental system often results in a number of alternative models that are all justifi...
AbstractModeling an experimental system often results in a number of alternative models that are all...
Modeling an experimental system often results in a number of alternative models that are justified e...
It often occurs that a system can be described by several competing models. In order to distinguish ...
In technical chemistry, systems biology and biotechnology, the construction of predictive models has...
Abstract—Systems biologists are often faced with competing models for a given experimental system. U...
AbstractSystem identification takes a space of possible models and a stream of observational data of...
Mathematical modeling of biochemical processes significantly contributes to a better understanding o...
Despite the ever-increasing interest in understanding biology at the system level, there are several...
Computational models are useful for quantitative elucidation of the dynamical behavior of biological...
Biological systems are often modeled by a set of differential equations. For any given system there ...
Deterministic dynamic models play a crucial role in elucidating the function of biological networks....
Developing mechanistic models has become an integral aspect of systems biology, as has the need to d...
AbstractA novel statistical procedure [S. Zwanzig, Math. Opsforsch. Statist. Ser. Statist.11, 23–47 ...
International audienceThis paper focuses on Bayesian modeling applied to the experimental methodolog...