We may attempt to encapsulate what we know about a physical system by a model structure, S. This collection of related models is defined by parametric relationships between system features; say observables (outputs), unobservable variables (states), and applied inputs. Each parameter vector in some parameter space is associated with a completely specified model in S. Before choosing a model in S to predict system behaviour, we must estimate its parameters from system observations. Inconveniently, multiple models (associated with distinct parameter estimates) may approximate data equally well. Yet, if these equally valid alternatives produce dissimilar predictions of unobserved quantities, then we cannot confidently make predictions. Thus, o...
The notion of identifiability addresses the question of whether it is at all possible to obtain uniq...
ed b 31 Parameter estimation (or identification) is an important to detect deficient models in advan...
A powerful way of gaining insight into biological systems is by creating a nonlinear differential eq...
A methodology is presented to investigate global identifiability within a class of structural model...
A prerequisite for a well-posed inference problem is that there exists a unique solution for any giv...
4 pages, 1 figureA parameter is structurally identifiable if its value can theoretically be estimate...
In this article we introduce a new concept, structural identifiability, which plays a central role i...
A number of inconsistencies, misunderstandings and ambiguities have arisen in the recent literature ...
Identification is an essential attribute of any model’s parameters, so we consider its three aspects...
Analysing the properties of a biological system through in silico experimentation requires a satisfa...
Identification is an essential attribute of any model's parameters, so we consider its three aspects...
Background: Structural identifiability concerns whether the parameters in a postulated model structu...
Structural identifiability analysis of nonlinear dynamic models requires symbolic manipulations, who...
Abstract Structural identifiability is a binary property that determines whether or not unique param...
The problem of model identifiability is addressed. The goal is to find all the structural models wit...
The notion of identifiability addresses the question of whether it is at all possible to obtain uniq...
ed b 31 Parameter estimation (or identification) is an important to detect deficient models in advan...
A powerful way of gaining insight into biological systems is by creating a nonlinear differential eq...
A methodology is presented to investigate global identifiability within a class of structural model...
A prerequisite for a well-posed inference problem is that there exists a unique solution for any giv...
4 pages, 1 figureA parameter is structurally identifiable if its value can theoretically be estimate...
In this article we introduce a new concept, structural identifiability, which plays a central role i...
A number of inconsistencies, misunderstandings and ambiguities have arisen in the recent literature ...
Identification is an essential attribute of any model’s parameters, so we consider its three aspects...
Analysing the properties of a biological system through in silico experimentation requires a satisfa...
Identification is an essential attribute of any model's parameters, so we consider its three aspects...
Background: Structural identifiability concerns whether the parameters in a postulated model structu...
Structural identifiability analysis of nonlinear dynamic models requires symbolic manipulations, who...
Abstract Structural identifiability is a binary property that determines whether or not unique param...
The problem of model identifiability is addressed. The goal is to find all the structural models wit...
The notion of identifiability addresses the question of whether it is at all possible to obtain uniq...
ed b 31 Parameter estimation (or identification) is an important to detect deficient models in advan...
A powerful way of gaining insight into biological systems is by creating a nonlinear differential eq...