Near-Optimum Online Ad Allocation for Targeted Advertising

Author:

Naor Joseph (Seffi)1,Wajc David2

Affiliation:

1. Technion, Haifa, Israel

2. Carnegie Mellon University, Pittsburgh, PA, USA

Abstract

Motivated by Internet targeted advertising, we address several ad allocation problems. Prior work has established that these problems admit no randomized online algorithm better than (1 - 1/ e )-competitive (see Karp et al. (1990) and Mehta et al. (2007)), yet simple heuristics have been observed to perform much better in practice. We explain this phenomenon by studying a generalization of the bounded-degree inputs considered by Buchbinder et al. (2007), graphs which we call ( k , d )- bounded . In such graphs the maximal degree on the online side is at most d and the minimal degree on the offline side is at least k . We prove that, for such graphs, these problems’ natural greedy algorithms attain a competitive ratio of 1 - d -1/ k + d -1, tending to 1 as d / k tends to zero. We prove this bound is tight for these algorithms. Next, we develop deterministic primal-dual algorithms for the above problems, achieving a competitive ratio of 1−(1 - 1/ d ) k > 1 - &1/ e k / d , or exponentially better loss as a function of k / /d , and strictly better than 1 - 1/e whenever kd . We complement our lower bounds with matching upper bounds for the vertex-weighted problem. Finally, we use our deterministic algorithms to prove by dual-fitting that simple randomized algorithms achieve the same bounds in expectation. Our algorithms and analysis differ from previous ad allocation algorithms, which largely scale bids based on the spent fraction of their bidder’s budget, whereas we scale bids according to the number of times the bidder could have spent as much as her current bid. Our algorithms differ from previous online primal-dual algorithms in that they do not maintain dual feasibility but only a primal-to-dual ratio and only attain dual feasibility upon termination. We believe our techniques could find applications to other well-behaved online packing problems.

Funder

ISF

United States-Israel BSF

Publisher

Association for Computing Machinery (ACM)

Subject

Computational Mathematics,Marketing,Economics and Econometrics,Statistics and Probability,Computer Science (miscellaneous)

Cited by 6 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Improved Competitive Ratio for Edge-Weighted Online Stochastic Matching;Web and Internet Economics;2023-12-31

2. Max-Min Greedy Matching;Theory of Computing;2022

3. Online Ad Allocation in Bounded-Degree Graphs;Web and Internet Economics;2022

4. Near Optimal Linear Algebra in the Online and Sliding Window Models;2020 IEEE 61st Annual Symposium on Foundations of Computer Science (FOCS);2020-11

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