Abstract

The primary focus of this article is the provision of tests for the validity of a set of conditional moment constraints additional to those defining the maintained hypothesis that are relevant for independent cross-sectional data contexts. The point of departure and principal contribution of the paper is the explicit and full incorporation of the conditional moment information defining the maintained hypothesis in the design of the test statistics. Thus, the approach mirrors that of the classical parametric likelihood setting by defining restricted tests in contradistinction to unrestricted tests that partially or completely fail to incorporate the maintained information in their formulation. The framework is quite general allowing the parameters defining the additional and maintained conditional moment restrictions to differ and permitting the conditioning variates to differ likewise. GMM and generalised empirical likelihood test statistics are suggested. The asymptotic properties of the statistics are described under both null hypothesis and a suitable sequence of local alternatives. An extensive set of simulation experiments explores the practical efficacy of the various test statistics in terms of empirical size and size-adjusted power confirming the superiority of restricted over unrestricted tests. A number of restricted tests possess both sufficiently satisfactory empirical size and power characteristics to allow their recommendation for econometric practice.

Highlights

  • The primary focus of this article is the provision of tests relevant for independent cross-sectional data for the validity of a set of conditional moment constraints in addition to those de ning the maintained hypothesis when a nite dimensional parameter vector is the object of inferential interest

  • GMM and generalized empirical likelihood (GEL) restricted test statistics are speci ed in section 3; an initial discussion presents the equivalence between conditional moment restrictions and an appropriately de ned in nite set of unconditional moment constraints together with the assumptions that underpin the analysis in the paper

  • The primary focus of this article has been concerned with the provision of tests for additional conditional moment constraints in cross-section or short panel data contexts

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Summary

Introduction

The primary focus of this article is the provision of tests relevant for independent cross-sectional data for the validity of a set of conditional moment constraints in addition to those de ning the maintained hypothesis when a nite dimensional parameter vector is the object of inferential interest. GMM and GEL test statistics de ned in Donald et al (2003) circumvent this di culty by allowing the number of unconditional moments to grow with sample size at an appropriate rate.2 Likewise here both maintained and null hypothesis conditional moment constraints are approximated by corresponding sets of unconditional moment restrictions with the former a subset of the latter, both of whose dimensions grow with sample size at appropriate rates. GMM and GEL restricted test statistics are speci ed in section 3; an initial discussion presents the equivalence between conditional moment restrictions and an appropriately de ned in nite set of unconditional moment constraints together with the assumptions that underpin the analysis in the paper. Statistics are \asymptotically equivalent" if they di er by an op(1) term

De nitions
Test Problem
Examples
Approximating Conditional Moment Restrictions
Basic Assumptions and Notation
Test Statistics
Asymptotic Null Distribution
Asymptotic Local Power
Simulation Evidence
Experimental Design
Approximating Functions
Estimators
Choice of the Number of Instruments
Empirical Size
Empirical Power
Summary
Conclusions
Asymptotic Local Alternative Distribution
Full Text
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