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Orthogonal Polynomials for Seminonparametric Instrumental Variables Model

4 September 2014
Yevgeniy Kovchegov
Neşe Yıldız
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Abstract

We develop an approach that resolves a {\it polynomial basis problem} for a class of models with discrete endogenous covariate, and for a class of econometric models considered in the work of Newey and Powell (2003), where the endogenous covariate is continuous. Suppose XXX is a ddd-dimensional endogenous random variable, Z1Z_1Z1​ and Z2Z_2Z2​ are the instrumental variables (vectors), and Z=(Z1Z2)Z=\left(\begin{array}{c}Z_1 \\Z_2\end{array}\right)Z=(Z1​Z2​​). Now, assume that the conditional distributions of XXX given ZZZ satisfy the conditions sufficient for solving the identification problem as in Newey and Powell (2003) or as in Proposition 1.1 of the current paper. That is, for a function π(z)\pi(z)π(z) in the image space there is a.s. a unique function g(x,z1)g(x,z_1)g(x,z1​) in the domain space such that E[g(X,Z_1)~|~Z]=\pi(Z) \qquad Z-a.s. In this paper, for a class of conditional distributions X∣ZX|ZX∣Z, we produce an orthogonal polynomial basis Qj(x,z1)Q_j(x,z_1)Qj​(x,z1​) such that for a.e. Z1=z1Z_1=z_1Z1​=z1​, and for all j∈Z+dj \in \mathbb{Z}_+^dj∈Z+d​, and a certain μ(Z)\mu(Z)μ(Z), P_j(\mu(Z))=E[Q_j(X, Z_1)~|~Z ], where PjP_jPj​ is a polynomial of degree jjj. This is what we call solving the {\it polynomial basis problem}. Assuming the knowledge of X∣ZX|ZX∣Z and an inference of π(z)\pi(z)π(z), our approach provides a natural way of estimating the structural function of interest g(x,z1)g(x,z_1)g(x,z1​). Our polynomial basis approach is naturally extended to Pearson-like and Ord-like families of distributions.

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