English

Feasible IV Regression without Excluded Instruments

Econometrics 2022-11-14 v4

Abstract

The relevance condition of Integrated Conditional Moment (ICM) estimators is significantly weaker than the conventional IV's in at least two respects: (1) consistent estimation without excluded instruments is possible, provided endogenous covariates are non-linearly mean-dependent on exogenous covariates, and (2) endogenous covariates may be uncorrelated with but mean-dependent on instruments. These remarkable properties notwithstanding, multiplicative-kernel ICM estimators suffer diminished identification strength, large bias, and severe size distortions even for a moderately sized instrument vector. This paper proposes a computationally fast linear ICM estimator that better preserves identification strength in the presence of multiple instruments and a test of the ICM relevance condition. Monte Carlo simulations demonstrate a considerably better size control in the presence of multiple instruments and a favourably competitive performance in general. An empirical example illustrates the practical usefulness of the estimator, where estimates remain plausible when no excluded instrument is used.

Keywords

Cite

@article{arxiv.2103.09621,
  title  = {Feasible IV Regression without Excluded Instruments},
  author = {Emmanuel Selorm Tsyawo},
  journal= {arXiv preprint arXiv:2103.09621},
  year   = {2022}
}

Comments

Updates to the theory, more simulations, and re-organised appendix and online supplement

R2 v1 2026-06-24T00:16:22.950Z