Strategizing against No-Regret Learners in First-Price Auctions (2402.08637v1)
Abstract: We study repeated first-price auctions and general repeated Bayesian games between two players, where one player, the learner, employs a no-regret learning algorithm, and the other player, the optimizer, knowing the learner's algorithm, strategizes to maximize its own utility. For a commonly used class of no-regret learning algorithms called mean-based algorithms, we show that (i) in standard (i.e., full-information) first-price auctions, the optimizer cannot get more than the Stackelberg utility -- a standard benchmark in the literature, but (ii) in Bayesian first-price auctions, there are instances where the optimizer can achieve much higher than the Stackelberg utility. On the other hand, Mansour et al. (2022) showed that a more sophisticated class of algorithms called no-polytope-swap-regret algorithms are sufficient to cap the optimizer's utility at the Stackelberg utility in any repeated Bayesian game (including Bayesian first-price auctions), and they pose the open question whether no-polytope-swap-regret algorithms are necessary to cap the optimizer's utility. For general Bayesian games, under a reasonable and necessary condition, we prove that no-polytope-swap-regret algorithms are indeed necessary to cap the optimizer's utility and thus answer their open question. For Bayesian first-price auctions, we give a simple improvement of the standard algorithm for minimizing the polytope swap regret by exploiting the structure of Bayesian first-price auctions.
- Learning to bid in contextual first price auctions. In Proceedings of the ACM Web Conference 2023, pages 3489–3497, 2023.
- Contextual bandits with cross-learning. Advances in Neural Information Processing Systems, 32, 2019.
- A. Blum and Y. Mansour. From external to internal regret. Journal of Machine Learning Research, 8(6), 2007.
- Selling to a no-regret buyer. In Proceedings of the 2018 ACM Conference on Economics and Computation, pages 523–538, 2018.
- Selling to multiple no-regret buyers. In International Conference on Web and Internet Economics, pages 113–129. Springer, 2023.
- Strategizing against no-regret learners. Advances in neural information processing systems, 32, 2019.
- First-price auctions in online display advertising. Journal of Marketing Research, 58(5):888–907, 2021.
- Convergence analysis of no-regret bidding algorithms in repeated auctions. In Proceedings of the AAAI Conference on Artificial Intelligence, volume 35, pages 5399–5406, 2021.
- Learning to bid optimally and efficiently in adversarial first-price auctions. arXiv preprint arXiv:2007.04568, 2020a.
- Optimal no-regret learning in repeated first-price auctions. arXiv preprint arXiv:2003.09795, 2020b.
- Strategizing against learners in bayesian games. In Conference on Learning Theory, pages 5221–5252. PMLR, 2022.
- Econometrics for learning agents. In Proceedings of the sixteenth acm conference on economics and computation, pages 1–18, 2015.
- M. Sion. On general minimax theorems. Pacific Journal of mathematics, 8(1):171–176, 1958.
- N. F. Taussig. Mathematics stack exchange. https://math.stackexchange.com/questions/2231965/count-number-of-increasing-functions-nondecreasing-functions-f-1-2-3-ld, 2017. Accessed: 2024-02-13.
- Y. Xu and K. Ligett. Commitment in first-price auctions. Economic Theory, 66(2):449–489, 2018.
- Leveraging the hints: Adaptive bidding in repeated first-price auctions. Advances in Neural Information Processing Systems, 35:21329–21341, 2022.
- Aviad Rubinstein (71 papers)
- Junyao Zhao (12 papers)