Identification is an essential attribute of any model's parameters, so we consider its three aspects of 'uniqueness', 'correspondence to reality' and 'interpretability'. Observationally-equivalent over-identified models can co-exist, and are mutually encompassing in the population; correctly-identified models need not correspond to the underlying structure; and may be wrongly interpreted. That a given model is over-identified with all over-identifying restrictions valid (even asymptotically) is insufficient to demonstrate that it is a unique representation. Moreover, structre (as invariance under extended information) need not be identifiable. We consider the role of structural breaks to discriminate between such representations
In this article we introduce a new concept, structural identifiability, which plays a central role i...
The problem of model identifiability is addressed. The goal is to find all the structural models wit...
Model structures are compared by estimating their expected prediction performance on a validation da...
Identification is an essential attribute of any model’s parameters, so we consider its three aspects...
Identification is an essential attribute of any model's parameters, so we consider its three aspects...
We may attempt to encapsulate what we know about a physical system by a model structure, S. This col...
A number of inconsistencies, misunderstandings and ambiguities have arisen in the recent literature ...
A methodology is presented to investigate global identifiability within a class of structural model...
There is a great diversity of theoretical frameworks in which the problem of structural identificati...
A prerequisite for a well-posed inference problem is that there exists a unique solution for any giv...
Background: Structural identifiability concerns whether the parameters in a postulated model structu...
This paper considers a wide class of latent structure models. These models can serve as possible exp...
In this paper we study the identifiability of nonparametric models, that is, models in which both th...
4 pages, 1 figureA parameter is structurally identifiable if its value can theoretically be estimate...
The article presents the problem of identification in parametric models from an algebraic point of v...
In this article we introduce a new concept, structural identifiability, which plays a central role i...
The problem of model identifiability is addressed. The goal is to find all the structural models wit...
Model structures are compared by estimating their expected prediction performance on a validation da...
Identification is an essential attribute of any model’s parameters, so we consider its three aspects...
Identification is an essential attribute of any model's parameters, so we consider its three aspects...
We may attempt to encapsulate what we know about a physical system by a model structure, S. This col...
A number of inconsistencies, misunderstandings and ambiguities have arisen in the recent literature ...
A methodology is presented to investigate global identifiability within a class of structural model...
There is a great diversity of theoretical frameworks in which the problem of structural identificati...
A prerequisite for a well-posed inference problem is that there exists a unique solution for any giv...
Background: Structural identifiability concerns whether the parameters in a postulated model structu...
This paper considers a wide class of latent structure models. These models can serve as possible exp...
In this paper we study the identifiability of nonparametric models, that is, models in which both th...
4 pages, 1 figureA parameter is structurally identifiable if its value can theoretically be estimate...
The article presents the problem of identification in parametric models from an algebraic point of v...
In this article we introduce a new concept, structural identifiability, which plays a central role i...
The problem of model identifiability is addressed. The goal is to find all the structural models wit...
Model structures are compared by estimating their expected prediction performance on a validation da...