Stefan Hoderlein
;
Anne Vanhems
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estimating the distribution of welfare effects using quantiles (replication data)

This paper proposes a framework to model welfare effects that are associated with a price change in a population of heterogeneous consumers. The framework is similar to that of Hausman and Newey (Econometrica, 1995, 63, 1445-1476), but allows for more general forms of heterogeneity. Individual demands are characterized by a general model that is nonparametric in the regressors, as well as monotonic in unobserved heterogeneity, allowing us to identify the distribution of welfare effects. We first argue why a decision maker should care about this distribution. Then we establish constructive identification, propose a sample counterparts estimator, and analyze its large-sample properties. Finally, we apply all concepts to measuring the heterogeneous effect of a change of gasoline price using US consumer data and find very substantial differences in individual effects across quantiles.

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Suggested Citation

Hoderlein, Stefan; Vanhems, Anne (2017): Estimating the distribution of welfare effects using quantiles (replication data). Version: 1. Journal of Applied Econometrics. Dataset. https://jda-test.zbw.eu/dataset/estimating-the-distribution-of-welfare-effects-using-quantiles?activity_id=433ebf3e-1285-4a58-bd0a-b4617d4bc941