We consider the strategic use of information by an online platform to both guide consumers' search through product recommendations and influence sellers' targeted advertising decision. Drawing on Bayesian persuasion, we posit that the platform can design a public signal that influences the beliefs of both consumers and sellers. Upon observing the signal, a consumer can conduct a sequential search with perfect recall among the sellers. After visiting a seller, the consumer observes the product price and whether the product is a match or not. Sellers set prices and decide how much to bid in an ad auction for each consumer, where the winner is granted a prominent position. The consumer can obtain the price and match information of the seller in the prominent position at no cost, but incur search cost to visit additional sellers.
CITATION STYLE
Tony Ke, T., Lin, S., & Lu, M. Y. (2023). Information Design of Online Platforms. In EC 2023 - Proceedings of the 24th ACM Conference on Economics and Computation (p. 912). Association for Computing Machinery, Inc. https://doi.org/10.1145/3580507.3597770
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