Optimal auctions through deep learning
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.
| Item Type | Chapter |
|---|---|
| Copyright holders | © 2019 The Authors |
| Departments | LSE > Academic Departments > Mathematics |
| Date Deposited | 29 May 2019 |
| Acceptance Date | 22 Apr 2019 |
| URI | https://researchonline.lse.ac.uk/id/eprint/100806 |
Explore Further
- http://www.lse.ac.uk/Mathematics/people/Paul-Duetting (Author)
- https://www.scopus.com/pages/publications/85079444939 (Scopus publication)
- http://proceedings.mlr.press/v97/ (Official URL)
-
picture_as_pdf - Duetting_optimal_auctions_through_deep_learning_published.pdf
-
subject - Published Version
-
- Creative Commons: Attribution 4.0
-
picture_as_pdf - Duetting_optimal_auctions_through_deep_learning_appendix_published.pdf
-
subject - Published Version
-
- Creative Commons: Attribution 4.0