Optimal Spend Rate Estimation and Pacing for Ad Campaigns with Budgets
Bhuvesh Kumar, Jamie Morgenstern, and Okke Schrijvers

TL;DR
This paper introduces learning theoretic guarantees for optimal spend rate estimation and pacing in online ad campaigns, addressing both episodic and slowly-changing models with proven bounds and practical algorithms.
Contribution
It provides the first theoretical guarantees on spend plan accuracy and end-to-end budget management for dynamic ad environments, extending existing algorithms to new models.
Findings
Sample complexity bounds for episodic models.
Regret bounds for combined estimation and pacing system.
Algorithm outperforms static plans in experiments.
Abstract
Online ad platforms offer budget management tools for advertisers that aim to maximize the number of conversions given a budget constraint. As the volume of impressions, conversion rates and prices vary over time, these budget management systems learn a spend plan (to find the optimal distribution of budget over time) and run a pacing algorithm which follows the spend plan. This paper considers two models for impressions and competition that varies with time: a) an episodic model which exhibits stationarity in each episode, but each episode can be arbitrarily different from the next, and b) a model where the distributions of prices and values change slowly over time. We present the first learning theoretic guarantees on both the accuracy of spend plans and the resulting end-to-end budget management system. We present four main results: 1) for the episodic setting we give sample…
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Taxonomy
TopicsConsumer Market Behavior and Pricing · Auction Theory and Applications · Advanced Bandit Algorithms Research
