Authors:
(1) Davide Viviano, Department of Economics, Harvard University;
(2) Lihua Lei, Graduate School of Business, Stanford University;
(3) Guido Imbens, Graduate School of Business and Department of Economics, Stanford University;
(4) Brian Karrer, FAIR, Meta;
(5) Okke Schrijvers, Meta Central Applied Science;
(6) Liang Shi, Meta Central Applied Science.
Table of Links
Empirical illustration and numerical studies
References
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