International audienceMatching problems have been widely studied in the research community, especially Ad-Auctions with many applications ranging from network design to advertising. Following the various advancements in machine learning, one natural question is whether classical algorithms can benefit from machine learning and obtain better-quality solutions. Even a small percentage of performance improvement in matching problems could result in significant gains for the studied use cases. For example, the network throughput or the revenue of Ad-Auctions can increase remarkably. This paper presents algorithms with machine learning predictions for the Online Bounded Allocation and the Online Ad-Auctions problems. We constructed primal-dual a...
Today's Internet marketing ecosystems are very complex, with many competing players, transactions co...
This paper is concerned with online learning of the optimal auction mechanism for sponsored search i...
Most of the existing weight-learning algorithms for Markov Logic Networks (MLNs) use batch training ...
In the last couple of decades, focus on speed and personalization has been a topic of major importan...
We consider a model of repeated online auctions in which an ad with an uncertain click-through rate ...
Part 9: OptimizationInternational audienceWe study the problem of optimal bid selection across ads a...
Inspired by online ad allocation, we study online stochastic packing linear programs from theoretica...
Abstract: Real-time bidding has emerged as an effective online advertising technique. With real-time...
Ads on the Internet are increasingly sold via ad exchanges such as RightMedia, AdECN and Doubleclick...
How to make the best match between advertisers and customer under budgetary constraint is an eternal...
The purpose of this paper is to give a "textbook quality" proof of the optimal algorithm, called Ran...
Internet search advertising is a huge worldwide industry. In 2011 about 19 billion dollars were spen...
We use techniques from sample-complexity in machine learning to reduce problems of incentive-compati...
Sponsored search is an important monetization channel for search engines, in which an auction mechan...
High turnover of online advertising and especially real time bidding makes this ad market very attra...
Today's Internet marketing ecosystems are very complex, with many competing players, transactions co...
This paper is concerned with online learning of the optimal auction mechanism for sponsored search i...
Most of the existing weight-learning algorithms for Markov Logic Networks (MLNs) use batch training ...
In the last couple of decades, focus on speed and personalization has been a topic of major importan...
We consider a model of repeated online auctions in which an ad with an uncertain click-through rate ...
Part 9: OptimizationInternational audienceWe study the problem of optimal bid selection across ads a...
Inspired by online ad allocation, we study online stochastic packing linear programs from theoretica...
Abstract: Real-time bidding has emerged as an effective online advertising technique. With real-time...
Ads on the Internet are increasingly sold via ad exchanges such as RightMedia, AdECN and Doubleclick...
How to make the best match between advertisers and customer under budgetary constraint is an eternal...
The purpose of this paper is to give a "textbook quality" proof of the optimal algorithm, called Ran...
Internet search advertising is a huge worldwide industry. In 2011 about 19 billion dollars were spen...
We use techniques from sample-complexity in machine learning to reduce problems of incentive-compati...
Sponsored search is an important monetization channel for search engines, in which an auction mechan...
High turnover of online advertising and especially real time bidding makes this ad market very attra...
Today's Internet marketing ecosystems are very complex, with many competing players, transactions co...
This paper is concerned with online learning of the optimal auction mechanism for sponsored search i...
Most of the existing weight-learning algorithms for Markov Logic Networks (MLNs) use batch training ...