← Back to results Innovation Policy and the Economy: Introduction to Volume 20 Josh Lerner & Scott Stern
Abstract Bravo-Biosca offers a constructive framework identifying different types of innovation policy experiments, ranging from more exploratory investigations to more detailed impact and best practice studies. As policymakers move from trying to simply understand key problems and bottlenecks toward evaluating specific programs, the case for prospective randomized trials increases. These “gold standard” tests likely have the greatest impact when trying to evaluate a specific program or initiative whose broad contours are already understood.
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@article{josh2019,
title = {{Innovation Policy and the Economy: Introduction to Volume 20}},
author = {Josh Lerner & Scott Stern},
journal = {Innovation Policy and the Economy},
year = {2019},
doi = {https://doi.org/https://doi.org/10.1086/705635},
} TY - JOUR
TI - Innovation Policy and the Economy: Introduction to Volume 20
AU - Lerner, Josh
AU - Stern, Scott
JO - Innovation Policy and the Economy
PY - 2019
ER - Josh Lerner & Scott Stern (2019). Innovation Policy and the Economy: Introduction to Volume 20. *Innovation Policy and the Economy*. https://doi.org/https://doi.org/10.1086/705635 Josh Lerner & Scott Stern. "Innovation Policy and the Economy: Introduction to Volume 20." *Innovation Policy and the Economy* (2019). https://doi.org/https://doi.org/10.1086/705635. Innovation Policy and the Economy: Introduction to Volume 20
Josh Lerner & Scott Stern · Innovation Policy and the Economy · 2019
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