Identification and Inference in General Bunching Designs
This paper develops a formal econometric framework and tools for the identification and inference of a structural parameter in general bunching designs. We present both point and partial identification results, which generalize previous approaches in the literature. The key assumption for point iden...
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Zusammenfassung: | This paper develops a formal econometric framework and tools for the
identification and inference of a structural parameter in general bunching
designs. We present both point and partial identification results, which
generalize previous approaches in the literature. The key assumption for point
identification is the analyticity of the counterfactual density, which defines
a broader class of distributions than many well-known parametric families. In
the partial identification approach, the analyticity condition is relaxed and
various shape restrictions can be incorporated, including those found in the
literature. Both of our identification results account for observable
heterogeneity in the model, which has previously been permitted only in limited
ways. We provide a suite of counterfactual estimation and inference methods,
termed the generalized polynomial strategy. Our method restores the merits of
the original polynomial strategy proposed by Chetty et al. (2011) while
addressing several weaknesses in the widespread practice. The efficacy of the
proposed method is demonstrated compared to a version of the polynomial
estimator in a series of Monte Carlo studies within the augmented isoelastic
model. We revisit the data used in Saez (2010) and find substantially different
results relative to those from the polynomial strategy. |
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DOI: | 10.48550/arxiv.2411.03625 |