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A Data-Driven Metric of Incentive Compatibility

Authors :
Sébastien Lahaie
Song Zuo
Vahab Mirrokni
Yuan Deng
Source :
WWW
Publication Year :
2020
Publisher :
ACM, 2020.

Abstract

An incentive-compatible auction incentivizes buyers to truthfully reveal their private valuations. However, many ad auction mechanisms deployed in practice are not incentive-compatible, such as first-price auctions (for display advertising) and the generalized second-price auction (for search advertising). We introduce a new metric to quantify incentive compatibility in both static and dynamic environments. Our metric is data-driven and can be computed directly through black-box auction simulations without relying on reference mechanisms or complex optimizations. We provide interpretable characterizations of our metric and prove that it is monotone in auction parameters for several mechanisms used in practice, such as soft floors and dynamic reserve prices. We empirically evaluate our metric on ad auction data from a major ad exchange and a major search engine to demonstrate its broad applicability in practice.

Details

Database :
OpenAIRE
Journal :
Proceedings of The Web Conference 2020
Accession number :
edsair.doi...........18927de2ca3b944ace8c45ce6e42daef