Maximizing Revenue under Market Shrinkage and Market Uncertainty
–Neural Information Processing Systems
A shrinking market is a ubiquitous challenge faced by various industries. In this paper we formulate the first formal model of shrinking markets in multi-item settings, and study how mechanism design and machine learning can help preserve revenue in an uncertain, shrinking market. Via a sample-based learning mechanism, we prove the first guarantees on how much revenue can be preserved by truthful multi-item, multi-bidder auctions (for limited supply) when only a random unknown fraction of the population participates in the market. We first present a general reduction that converts any sufficiently rich auction class into a randomized auction robust to market shrinkage. Our main technique is a novel combinatorial construction called a winner diagram that concisely represents all possible executions of an auction on an uncertain set of bidders. Via a probabilistic analysis of winner diagrams, we derive a general possibility result: a sufficiently rich class of auctions always contains an auction that is robust to market shrinkage and market uncertainty. Our result has applications to important practically-constrained settings such as auctions with a limited number of winners. We then show how to efficiently learn an auction that is robust to market shrinkage by leveraging practically-efficient routines for solving the winner determination problem.
Neural Information Processing Systems
Apr-24-2026, 12:11:35 GMT
- Country:
- North America > United States (0.68)
- Genre:
- Research Report > New Finding (0.34)
- Industry:
- Information Technology > Services (0.93)
- Media (0.68)
- Retail (0.68)
- Consumer Products & Services (0.68)
- Technology: