Abstract

Abstract Two-stage least squares (TSLS) is widely used in econometrics to estimate parameters in systems of linear simultaneous equations and to solve problems of omitted-variables bias in single-equation estimation. We show here that TSLS can also be used to estimate the average causal effect of variable treatments such as drug dosage, hours of exam preparation, cigarette smoking, and years of schooling. The average causal effect in which we are interested is a conditional expectation of the difference between the outcomes of the treated and what these outcomes would have been in the absence of treatment. Given mild regularity assumptions, the probability limit of TSLS is a weighted average of per-unit average causal effects along the length of an appropriately defined causal response function. The weighting function is illustrated in an empirical example based on the relationship between schooling and earnings.

Keywords

MathematicsWeightingInstrumental variableStatisticsEconometricsLeast-squares function approximationVariable (mathematics)Medicine

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Publication Info

Year
1995
Type
article
Volume
90
Issue
430
Pages
431-442
Citations
858
Access
Closed

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Joshua D. Angrist, Guido W. Imbens (1995). Two-Stage Least Squares Estimation of Average Causal Effects in Models with Variable Treatment Intensity. Journal of the American Statistical Association , 90 (430) , 431-442. https://doi.org/10.1080/01621459.1995.10476535

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DOI
10.1080/01621459.1995.10476535