Online auction scenarios, such as bidding searches on advertising platforms, often require bidders to participate repeatedly in auctions for the same or similar items. We design an algorithm for adaptive automatic bidding in repeated auctions in which the seller and other bidders also update their strategies. We apply and improve the opponent modeling algorithm to allow bidders to learn optimal bidding strategies in this multiagent reinforcement learning environment. The algorithm uses almost no private information about the opponent or restrictions on the strategy space, so it can be extended to multiple scenarios. Our algorithm improves the utility compared to both static bidding strategies and dynamic learning strategies. We hope the app...
[[abstract]]We are concerned with the issues on designing adaptive trading agents to learn bidding s...
We present a simulation approach that provides a relatively risk-free and cost-effective environment...
International audienceIn online advertising, search engines sell ad placements for keywords continuo...
Auction theory historically focused on the question of designing the best way to sell a single item ...
International audienceWe introduce a new numerical framework to learn optimal bidding strategies in ...
© 2016 J. Weed, V. Perchet & P. Rigollet. Motivated by online advertising auctions, we consider re...
Abstract. Motivated by online advertising auctions, we consider re-peated Vickrey auctions where goo...
In developing open, heterogeneous and distributed multi-agent systems researchers often face a probl...
Motivated by Carbon Emissions Trading Schemes, Treasury Auctions, and Procurement Auctions, which al...
Real-time bidding (RTB) is a popular method to sell online ad space inventory using real-time auctio...
Reverse auctions in Business-to-Business (B2B) exchanges provide numerous benefits to participants. ...
In this thesis we investigate if reinforcement learning (RL) techniques can be successfully used to...
As computational agents are developed for increasingly complicated e-commerce applications, the comp...
Internet auctions, as an exemplar of the recent boom in e-commerce, are grow- ing faster than ever i...
When an internet user opens a web page containing an advertising slot, how is it determined which ad...
[[abstract]]We are concerned with the issues on designing adaptive trading agents to learn bidding s...
We present a simulation approach that provides a relatively risk-free and cost-effective environment...
International audienceIn online advertising, search engines sell ad placements for keywords continuo...
Auction theory historically focused on the question of designing the best way to sell a single item ...
International audienceWe introduce a new numerical framework to learn optimal bidding strategies in ...
© 2016 J. Weed, V. Perchet & P. Rigollet. Motivated by online advertising auctions, we consider re...
Abstract. Motivated by online advertising auctions, we consider re-peated Vickrey auctions where goo...
In developing open, heterogeneous and distributed multi-agent systems researchers often face a probl...
Motivated by Carbon Emissions Trading Schemes, Treasury Auctions, and Procurement Auctions, which al...
Real-time bidding (RTB) is a popular method to sell online ad space inventory using real-time auctio...
Reverse auctions in Business-to-Business (B2B) exchanges provide numerous benefits to participants. ...
In this thesis we investigate if reinforcement learning (RL) techniques can be successfully used to...
As computational agents are developed for increasingly complicated e-commerce applications, the comp...
Internet auctions, as an exemplar of the recent boom in e-commerce, are grow- ing faster than ever i...
When an internet user opens a web page containing an advertising slot, how is it determined which ad...
[[abstract]]We are concerned with the issues on designing adaptive trading agents to learn bidding s...
We present a simulation approach that provides a relatively risk-free and cost-effective environment...
International audienceIn online advertising, search engines sell ad placements for keywords continuo...