Name File Type Size Last Modified
  Replication_AEA 04/07/2023 10:08:PM

Project Citation: 

Cheng, Zhaoqi, Jin, Ginger, Leccese, Mario , Lee, Dokyun, and Wagman, Liad . Data and Code for: M&A and Innovation: A New Classification of Patents. Nashville, TN: American Economic Association [publisher], 2023. Ann Arbor, MI: Inter-university Consortium for Political and Social Research [distributor], 2023-04-28. https://doi.org/10.3886/E188121V1

Project Description

Summary:  View help for Summary Policymakers are increasingly concerned that incumbent acquisitions of small or young firms may slow down rather than speed up innovation, but it is difficult to identify which firms are related in the fast-changing space of technological innovation. This paper proposes a new, data-driven method to classify patent data into tech-business zones on a probabilistic basis, using patent assignee information. After combining M&A data from S&P Global Market Intelligence with PatentsView data from the US Patent and Trademark Office, we discuss how the zone classification can aid merger reviews and other lines of research. 

Scope of Project

JEL Classification:  View help for JEL Classification
      D40 Market Structure, Pricing, and Design: General
      G30 Corporate Finance and Governance: General


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