Innovating Big Tech firms and competition policy: favoring dynamic over static competition

Author:

Petit Nicolas1ORCID,Teece David J23

Affiliation:

1. Law Department and Robert Schuman Center for Advanced Studies, European University Institute, Via Boccaccio 121, Florence 50133, Italy

2. Institute for Business Innovation, University of California, F402 Haas School of Business #1930, Berkeley, CA 94720-1930, USA

3. Berkeley Research Group Institute, Berkeley, CA, USA

Abstract

Abstract This paper gives a fresh account of competition in the digital economy. Economic analysis in the field of industrial organization remains largely focused on a sophisticated version of the Schumpeter–Arrow debate, which is unresolved and largely irrelevant. We posit the need to look at competition anew. Static models of monopoly firms and markets in equilibrium are often used to characterize Big Tech firms’ size and scope. We suggest that this characterization is inappropriate because the growth and diversification of many digital firms lead to a situation of broad-spectrum competition that cuts across markets. Current market positions do not reflect entrenched monopoly power but are vulnerable to competitive pressure of disequilibrating forces arising from the use of data-driven operating models, astute resource orchestration, and the exercise of dynamic capabilities. A few strategic errors by management in the handling of internal transitions and/or external challenges and they could be competitively impaired. The implications of a more dynamic understanding of the competition process in the tech sector are explored. We consider how big data and entrepreneurial management impacts firm performance. We also explore the nature of different types of rents (Schumpeterian, Ricardian, and monopoly rents) and suggest a modified long-term consumer welfare standard for competition policy. We formulate preliminary tests and predictors to assess dynamic competition. Our perspective advances a policy stance that favors innovation.

Publisher

Oxford University Press (OUP)

Subject

Economics and Econometrics

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