Leveraging the Hints: Adaptive Bidding in Repeated First-Price Auctions
- URL: http://arxiv.org/abs/2211.06358v1
- Date: Sat, 5 Nov 2022 19:20:53 GMT
- Title: Leveraging the Hints: Adaptive Bidding in Repeated First-Price Auctions
- Authors: Wei Zhang, Yanjun Han, Zhengyuan Zhou, Aaron Flores, Tsachy Weissman
- Abstract summary: We study the question of how to bid in first-price auctions.
Unlike in second-price auctions, bidding one's private value truthfully is no longer optimal.
We consider two types of hints: one where a single point-prediction is available, and the other where a hint interval is available.
- Score: 42.002983450368134
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: With the advent and increasing consolidation of e-commerce, digital
advertising has very recently replaced traditional advertising as the main
marketing force in the economy. In the past four years, a particularly
important development in the digital advertising industry is the shift from
second-price auctions to first-price auctions for online display ads. This
shift immediately motivated the intellectually challenging question of how to
bid in first-price auctions, because unlike in second-price auctions, bidding
one's private value truthfully is no longer optimal. Following a series of
recent works in this area, we consider a differentiated setup: we do not make
any assumption about other bidders' maximum bid (i.e. it can be adversarial
over time), and instead assume that we have access to a hint that serves as a
prediction of other bidders' maximum bid, where the prediction is learned
through some blackbox machine learning model. We consider two types of hints:
one where a single point-prediction is available, and the other where a hint
interval (representing a type of confidence region into which others' maximum
bid falls) is available. We establish minimax optimal regret bounds for both
cases and highlight the quantitatively different behavior between the two
settings. We also provide improved regret bounds when the others' maximum bid
exhibits the further structure of sparsity. Finally, we complement the
theoretical results with demonstrations using real bidding data.
Related papers
- A pragmatic policy learning approach to account for users' fatigue in repeated auctions [47.75983850930121]
ML models can predict how previously won auctions the current opportunity value.
A policy that uses this prediction tomaximize the expected payoff of the current auction could be dubbedimpatient.
We provide two empirical arguments for the importance of this cost ofimpatience.
arXiv Detail & Related papers (2024-07-15T07:53:29Z) - Advancing Ad Auction Realism: Practical Insights & Modeling Implications [2.8413290300628313]
This paper shows that one can still gain useful insight into modern ad auctions by modeling advertisers as agents governed by an adversarial bandit algorithm.
We find that soft floors yield lower revenues than suitably chosen reserve prices, even restricting attention to a single query.
arXiv Detail & Related papers (2023-07-21T17:45:28Z) - Autobidders with Budget and ROI Constraints: Efficiency, Regret, and Pacing Dynamics [53.62091043347035]
We study a game between autobidding algorithms that compete in an online advertising platform.
We propose a gradient-based learning algorithm that is guaranteed to satisfy all constraints and achieves vanishing individual regret.
arXiv Detail & Related papers (2023-01-30T21:59:30Z) - A Reinforcement Learning Approach in Multi-Phase Second-Price Auction
Design [158.0041488194202]
We study reserve price optimization in multi-phase second price auctions.
From the seller's perspective, we need to efficiently explore the environment in the presence of potentially nontruthful bidders.
Third, the seller's per-step revenue is unknown, nonlinear, and cannot even be directly observed from the environment.
arXiv Detail & Related papers (2022-10-19T03:49:05Z) - Fast Rate Learning in Stochastic First Price Bidding [0.0]
First-price auctions have largely replaced traditional bidding approaches based on Vickrey auctions in programmatic advertising.
We show how to achieve significantly lower regret when the opponents' maximal bid distribution is known.
Our algorithms converge much faster than alternatives proposed in the literature for various bid distributions.
arXiv Detail & Related papers (2021-07-05T07:48:52Z) - A novel auction system for selecting advertisements in Real-Time bidding [68.8204255655161]
Real-Time Bidding is a new Internet advertising system that has become very popular in recent years.
We propose an alternative betting system with a new approach that not only considers the economic aspect but also other relevant factors for the functioning of the advertising system.
arXiv Detail & Related papers (2020-10-22T18:36:41Z) - Learning to Bid Optimally and Efficiently in Adversarial First-price
Auctions [40.30925727499806]
We develop the first minimax optimal online bidding algorithm that achieves an $widetildeO(sqrtT)$ regret.
We test our algorithm on three real-world first-price auction datasets obtained from Verizon Media.
arXiv Detail & Related papers (2020-07-09T05:40:39Z) - Optimal No-regret Learning in Repeated First-price Auctions [38.908235632001116]
We study online learning in repeated first-price auctions.
We develop the first learning algorithm that achieves a near-optimal $widetildeO(sqrtT)$ regret bound.
arXiv Detail & Related papers (2020-03-22T03:32:09Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.