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Two-Sample IV: Efficient Two-Step Estimation and Tests for Overidentification and Weak-Instruments

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  • Fatima Kasenally
  • Ruoxi Guan
  • Frank Windmeijer

Abstract

Two-sample IV is a popular estimation method when the outcome and treatment variables are available in different samples, whereas instruments are available in both samples. The standard estimator is two-sample two-stage least squares estimator, which is efficient under homoskedasticity and homogeneity of the samples. We develop a robust two-step procedure for efficient estimation under general heteroskedasticity and heterogeneity of the samples, and propose a related two-sample Hansen overidentification test. A key feature of our approach is that only summary statistics from the linear regressions of the reduced form and first-stage in the two samples are needed. These are the six objects of the estimated coefficient vectors, and the homoskedastic and heteroskedasticity robust estimated variance matrices. We further show that the first-stage F-statistic in the treatment sample can be used as a test for weak instruments in the standard way under homoskedasticity and homogeneity, with the relative bias here a proportional bias. We propose an extension of the effective F-statistic of Montiel-Olea and Pflueger (2013) for the heteroskedastic case, following the generalization in Windmeijer (2025). We illustrate the estimators and tests in an application studying the effect of education on voting behavior from Marshall (2019), with cluster robust inference.

Suggested Citation

  • Fatima Kasenally & Ruoxi Guan & Frank Windmeijer, 2026. "Two-Sample IV: Efficient Two-Step Estimation and Tests for Overidentification and Weak-Instruments," Papers 2606.20240, arXiv.org.
  • Handle: RePEc:arx:papers:2606.20240
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    File URL: https://arxiv.org/pdf/2606.20240
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