scholarly journals Optimizing reserve prices for publishers in online ad auctions

Author(s):  
Jason Rhuggenaath ◽  
Alp Akcay ◽  
Yingqian Zhang ◽  
Uzay Kaymak
Keyword(s):  
1996 ◽  
Vol 15 (2) ◽  
pp. 149-164 ◽  
Author(s):  
Roberto Burguet ◽  
József Sákovics
Keyword(s):  

2011 ◽  
Vol 56 (188) ◽  
pp. 125-169
Author(s):  
Dejan Trifunovic

This paper reviews single object auctions when bidders? values of the object are interdependent. We will see how the auction forms could be ranked in terms of expected revenue when signals that bidders have about the value of the object are affiliated. In the discussion that follows we will deal with reserve prices and entry fees. Furthermore we will examine the conditions that have to be met for English auction with asymmetric bidders to allocate the object efficiently. Finally, common value auctions will be considered when all bidders have the same value for the object.


2017 ◽  
Author(s):  
Francesco Decarolis ◽  
Maris Goldmanis ◽  
Antonio Penta
Keyword(s):  

2021 ◽  
pp. 1-15
Author(s):  
Tuomo Tilli ◽  
Leonardo Espinosa-Leal

Online advertisements are bought through a mechanism called real-time bidding (RTB). In RTB, the ads are auctioned in real-time on every webpage load. The ad auctions can be of two types: second-price or first-price auctions. In second-price auctions, the bidder with the highest bid wins the auction, but they only pay the second-highest bid. This paper focuses on first-price auctions, where the buyer pays the amount that they bid. This research evaluates how multi-armed bandit strategies optimize the bid size in a commercial demand-side platform (DSP) that buys inventory through ad exchanges. First, we analyze seven multi-armed bandit algorithms on two different offline real datasets gathered from real second-price auctions. Then, we test and compare the performance of three algorithms in a production environment. Our results show that real data from second-price auctions can be used successfully to model first-price auctions. Moreover, we found that the trained multi-armed bandit algorithms reduce the bidding costs considerably compared to the baseline (naïve approach) on average 29%and optimize the whole budget by slightly reducing the win rate (on average 7.7%). Our findings, tested in a real scenario, show a clear and substantial economic benefit for ad buyers using DSPs.


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