Platform Design When Sellers Use Pricing Algorithms

42 Pages Posted: 23 Dec 2020

See all articles by Justin Johnson

Justin Johnson

Cornell University

Andrew Rhodes

University of Toulouse 1 - Toulouse School of Economics (TSE)

Matthijs R. Wildenbeest

University of Arizona - Department of Economics

Date Written: November 1, 2020

Abstract

Using both economic theory and Artificial Intelligence (AI) pricing algorithms, we investigate the ability of a platform to design its marketplace to promote competition, improve consumer surplus, and even raise its own profits. We allow sellers to use Q-learning algorithms (a common reinforcement-learning technique from the computer-science literature) to devise pricing strategies in a setting with repeated interactions, and consider the effect of platform rules that reward firms that cut prices with additional exposure to consumers. Overall, the evidence from our experiments suggests that platform design decisions can meaningfully benefit consumers even when algorithmic collusion might otherwise emerge but that achieving these gains may require more than the simplest steering policies when algorithms value the future highly. We also find that policies that raise consumer surplus can raise the profits of the platform, depending on the platform's revenue model. Finally, we document several learning challenges faced by the algorithms.

JEL Classification: K21, L00

Suggested Citation

Johnson, Justin and Rhodes, Andrew and Wildenbeest, Matthijs R., Platform Design When Sellers Use Pricing Algorithms (November 1, 2020). CEPR Discussion Paper No. DP15504, Available at SSRN: https://ssrn.com/abstract=3753903

Justin Johnson (Contact Author)

Cornell University ( email )

Ithaca, NY 14853
United States

Andrew Rhodes

University of Toulouse 1 - Toulouse School of Economics (TSE) ( email )

Place Anatole-France
Toulouse Cedex, F-31042
France

Matthijs R. Wildenbeest

University of Arizona - Department of Economics ( email )

McClelland Hall
Tucson, AZ 85721-0108
United States

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