Identification of counterfactuals in dynamic discrete choice models
Dynamic discrete choice (DDC) models are not identified nonparametrically, but the non‐identification of models does not necessarily imply the nonidentification of counterfactuals. We derive novel results for the identification of counterfactuals in DDC models, such as non‐additive changes in payoffs or changes to agents' choice sets. In doing so, we propose a general framework that allows the investigation of the identification of a broad class of counterfactuals (covering virtually any counterfactual encountered in applied work). To illustrate the results, we consider a firm entry/exit problem numerically, as well as an empirical model of agricultural land use. In each case, we provide examples of both identified and nonidentified counterfactuals of interest.
Year of publication: |
2021
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Authors: | Kalouptsidi, Myrto ; Scott, Paul T. ; Souza-Rodrigues, Eduardo |
Published in: |
Quantitative Economics. - The Econometric Society, ISSN 1759-7323, ZDB-ID 2569569-1. - Vol. 12.2021, 2, p. 351-403
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Publisher: |
The Econometric Society |
Saved in:
Online Resource
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