GTLGTHJul 11, 2022

Dynamic Budget Throttling in Repeated Second-Price Auctions

arXiv:2207.04690v76 citationsh-index: 10
Originality Incremental advance
AI Analysis

Provides theoretical foundations for advertisers needing budget control in online advertising auctions, with some incremental contributions to existing literature.

This paper provides theoretical analysis of dynamic budget throttling in repeated second-price auctions, establishing lower bounds on regret and upper bounds on competitive ratios for both stochastic and adversarial value settings, and shows throttling is asymptotically optimal in adversarial cases while pacing is superior in stochastic cases.

In today's online advertising markets, a crucial requirement for an advertiser is to control her total expenditure within a time horizon under some budget. Among various budget control methods, throttling has emerged as a popular choice, managing an advertiser's total expenditure by selecting only a subset of auctions to participate in. This paper provides a theoretical panorama of a single advertiser's dynamic budget throttling process in repeated second-price auctions. We first establish a lower bound on the regret and an upper bound on the asymptotic competitive ratio for any throttling algorithm, respectively, when the advertiser's values are stochastic and adversarial. Regarding the algorithmic side, we propose the OGD-CB algorithm, which guarantees a near-optimal expected regret with stochastic values. On the other hand, when values are adversarial, we prove that this algorithm also reaches the upper bound on the asymptotic competitive ratio. We further compare throttling with pacing, another widely adopted budget control method, in repeated second-price auctions. In the stochastic case, we demonstrate that pacing is generally superior to throttling for the advertiser, supporting the well-known result that pacing is asymptotically optimal in this scenario. However, in the adversarial case, we give an exciting result indicating that throttling is also an asymptotically optimal dynamic bidding strategy. Our results bridge the gaps in theoretical research of throttling in repeated auctions and comprehensively reveal the ability of this popular budget-smoothing strategy.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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