Optimal auctions through deep learning

Dütting, Paul; Feng, Zhe; Narasimham, Harikrishna; Parkes, David C.; and Ravindranath, Sal S (2019) Optimal auctions through deep learning In: Proceedings of the 36th International Conference on Machine Learning, ICML 2019. Proceedings of Machine Learning Research, 97 . International Machine Learning Society, 1706 - 1715. ISBN 9781510886988
Copy

Designing an incentive compatible auction that maximizes expected revenue is an intricate task. The single-item case was resolved in a seminal piece of work by Myerson in 1981. Even after 30-40 years of intense research the problem remains unsolved for seemingly simple multibidder, multi-item settings. In this work, we initiate the exploration of the use of tools from deep learning for the automated design of optimal auctions. We model an auction as a multi-layer neural network, frame optimal auction design as a constrained learning problem, and show how it can be solved using standard pipelines. We prove generalization bounds and present extensive experiments, recovering essentially all known analytical solutions for multi-item settings, and obtaining novel mechanisms for settings in which the optimal mechanism is unknown.

picture_as_pdf

picture_as_pdf
Duetting_optimal_auctions_through_deep_learning_published.pdf
subject
Published Version
Available under Creative Commons: Attribution 4.0

Download

Published Version


Atom BibTeX OpenURL ContextObject in Span OpenURL ContextObject Dublin Core MPEG-21 DIDL Data Cite XML EndNote HTML Citation METS MODS RIOXX2 XML Reference Manager Refer ASCII Citation
Export

Downloads