Résumé
We study best linear predictions in a context where the outcome of interest and some of the covariates are observed in two different datasets that can-not be matched. Traditional approaches obtain point identification by relying, often implicitly, on exclusion restrictions. We show that without such restric-tions, coefficients of interest can still be partially identified and we derive a constructive characterization of the sharp identified set. We then build on this characterization to develop computationally simple and asymptotically normal estimators of the corresponding bounds. We show that these estimators exhibit good finite sample performances.
Mots-clés
Best linear prediction; data combination; partial identification; inference.;
Référence
Xavier D'Haultfoeuille, Christophe Gaillac et Arnaud Maurel, « Linear Regressions with Combined Data », TSE Working Paper, n° 24-1602, décembre 2024.
Voir aussi
Publié dans
TSE Working Paper, n° 24-1602, décembre 2024