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A general theory of identification

14 February 2020
Guillaume W. Basse
Iavor Bojinov
ArXiv (abs)PDFHTML
Abstract

What does it mean to say that a quantity is identifiable from the data? Statisticians seem to agree on a definition in the context of parametric statistical models --- roughly, a parameter θ\thetaθ in a model P={Pθ:θ∈Θ}\mathcal{P} = \{P_\theta: \theta \in \Theta\}P={Pθ​:θ∈Θ} is identifiable if the mapping θ↦Pθ\theta \mapsto P_\thetaθ↦Pθ​ is injective. This definition raises important questions: Are parameters the only quantities that can be identified? Is the concept of identification meaningful outside of parametric statistics? Does it even require the notion of a statistical model? Partial and idiosyncratic answers to these questions have been discussed in econometrics, biological modeling, and in some subfields of statistics like causal inference. This paper proposes a unifying theory of identification that incorporates existing definitions for parametric and nonparametric models and formalizes the process of identification analysis. The applicability of this framework is illustrated through a series of examples and two extended case studies.

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