核心概念
Online mechanism design with predictions aims to optimize revenue through a strategyproof mechanism.
摘要
The content discusses the concept of online mechanism design with predictions, focusing on revenue-maximizing auctions. It introduces the Three-Phase auction, analyzing its consistency and robustness guarantees. The study extends to an Error-Tolerant auction for improved revenue guarantees based on prediction quality. Impossibility results for revenue maximization are also explored, highlighting the challenges and constraints in achieving optimal performance.
統計資料
Our main result is a strategyproof mechanism whose revenue guarantees are α-consistent with respect to the highest value and (1 −α2)/4-robust with respect to the second-highest value, for α ∈[0, 1].
The Three-Phase learning-augmented online auction achieves α-consistency with respect to the first-best revenue benchmark and (1 −α2)/4-robustness with respect to the second-best revenue benchmark.
引述
"The goal is to use predictions to guarantee strong performance when accurate and maintain worst-case guarantees when inaccurate."
"The Three-Phase auction achieves a trade-off between consistency and robustness in online mechanism design."