Budget Pacing in Repeated Auctions: Regret and Efficiency without Convergence
In "Seminars and talks"

Speakers

Bar Light
Bar Light

Assistant Professor, Tel Aviv University's School of Mathematics

Bar Light is an assistant professor in the Department of Statistics and Operations Research in Tel Aviv University’s School of Mathematics. Bar was previously a Postdoctoral Researcher at Microsoft Research focusing on market design and designing ad-auctions. Bar obtained a PhD in Operations Research from Stanford university. His research mainly focuses on market design for platforms, the analysis of large markets and systems, and dynamic optimization.


Date:
Friday, 4 August 2023
Time:
10:00 am - 11:30 am
Venue:
NUS Business School
Mochtar Riady Building BIZ1-0202
15 Kent Ridge Drive
Singapore 119245 (Map)

Abstract

We study the aggregate welfare and individual regret guarantees of dynamic pacing algorithms in the context of repeated auctions with budgets. Such algorithms are commonly used as bidding agents in Internet advertising platforms. We show that when agents simultaneously apply a natural form of gradient-based pacing, the liquid welfare obtained over the course of the learning dynamics is at least half the optimal expected liquid welfare obtainable by any allocation rule. Crucially, this result holds without requiring convergence of the dynamics, allowing us to circumvent known complexity-theoretic obstacles of finding equilibria. This result is also robust to the correlation structure between agent valuations and holds for any core auction, a broad class of auctions that includes first-price, second-price, and generalized second-price auctions. For individual guarantees, we further show such pacing algorithms enjoy dynamic regret bounds for individual value maximization, with respect to the sequence of budget-pacing bids, for any auction satisfying a monotone bang-for-buck property.