Online Bidding Algorithms for Return-on-Spend Constrained Advertisers

08/29/2022
by   Zhe Feng, et al.
0

Online advertising has recently grown into a highly competitive and complex multi-billion-dollar industry, with advertisers bidding for ad slots at large scales and high frequencies. This has resulted in a growing need for efficient "auto-bidding" algorithms that determine the bids for incoming queries to maximize advertisers' targets subject to their specified constraints. This work explores efficient online algorithms for a single value-maximizing advertiser under an increasingly popular constraint: Return-on-Spend (RoS). We quantify efficiency in terms of regret relative to the optimal algorithm, which knows all queries a priori. We contribute a simple online algorithm that achieves near-optimal regret in expectation while always respecting the specified RoS constraint when the input sequence of queries are i.i.d. samples from some distribution. We also integrate our results with the previous work of Balseiro, Lu, and Mirrokni [BLM20] to achieve near-optimal regret while respecting both RoS and fixed budget constraints. Our algorithm follows the primal-dual framework and uses online mirror descent (OMD) for the dual updates. However, we need to use a non-canonical setup of OMD, and therefore the classic low-regret guarantee of OMD, which is for the adversarial setting in online learning, no longer holds. Nonetheless, in our case and more generally where low-regret dynamics are applied in algorithm design, the gradients encountered by OMD can be far from adversarial but influenced by our algorithmic choices. We exploit this key insight to show our OMD setup achieves low regret in the realm of our algorithm.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/27/2023

Near-Optimal Algorithms for Private Online Optimization in the Realizable Regime

We consider online learning problems in the realizable setting, where th...
research
01/21/2022

Optimal Dynamic Regret in Proper Online Learning with Strongly Convex Losses and Beyond

We study the framework of universal dynamic regret minimization with str...
research
01/18/2022

Safe Online Bid Optimization with Return-On-Investment and Budget Constraints subject to Uncertainty

In online marketing, the advertisers' goal is usually a tradeoff between...
research
06/22/2020

Beyond O(√(T)) Regret for Constrained Online Optimization: Gradual Variations and Mirror Prox

We study constrained online convex optimization, where the constraints c...
research
02/03/2023

Robust Budget Pacing with a Single Sample

Major Internet advertising platforms offer budget pacing tools as a stan...
research
02/02/2023

Online Bidding in Repeated Non-Truthful Auctions under Budget and ROI Constraints

Online advertising platforms typically use auction mechanisms to allocat...
research
07/10/2023

Online Ad Procurement in Non-stationary Autobidding Worlds

Today's online advertisers procure digital ad impressions through intera...

Please sign up or login with your details

Forgot password? Click here to reset