Some Identification Issues in Nonparametric Linear Models with Endogenous Regressors


Autoria(s): Severini, Thomas A.; Tripathi, Gautam
Data(s)

01/04/2005

Resumo

In applied work economists often seek to relate a given response variable y to some causal parameter mu* associated with it. This parameter usually represents a summarization based on some explanatory variables of the distribution of y, such as a regression function, and treating it as a conditional expectation is central to its identification and estimation. However, the interpretation of mu* as a conditional expectation breaks down if some or all of the explanatory variables are endogenous. This is not a problem when mu* is modelled as a parametric function of explanatory variables because it is well known how instrumental variables techniques can be used to identify and estimate mu*. In contrast, handling endogenous regressors in nonparametric models, where mu* is regarded as fully unknown, presents di±cult theoretical and practical challenges. In this paper we consider an endogenous nonparametric model based on a conditional moment restriction. We investigate identification related properties of this model when the unknown function mu* belongs to a linear space. We also investigate underidentification of mu* along with the identification of its linear functionals. Several examples are provided in order to develop intuition about identification and estimation for endogenous nonparametric regression and related models.

Formato

application/pdf

Identificador

http://digitalcommons.uconn.edu/econ_wpapers/200512

http://digitalcommons.uconn.edu/cgi/viewcontent.cgi?article=1075&context=econ_wpapers

Publicador

DigitalCommons@UConn

Fonte

Economics Working Papers

Palavras-Chave #endogeneity #identification #instrumental variables #nonparametric models #Economics
Tipo

text