Ranking system is the core part of modern retrieval and recommender systems, where the goal is to rank candidate items given user contexts. Optimizing ranking systems online means that the deployed system can serve user requests, e.g., queries in the web search, and optimize the ranking policy by learning from user interactions, e.g., clicks. Bandit is a general online learning framework and can be used in our optimization task. However, due to the unique features of ranking, there are several challenges in designing bandit algorithms for ranking system optimization. In this dissertation, we study and propose solutions for four challenges in optimizing ranking systems online: effectiveness, safety, nonstationarity, and diversification. Firs...
International audienceWe tackle the online ranking problem of assigning L items to K positions on a ...
In this paper we give an overview of and outlook on research at the intersection of information retr...
Recommender systems make product suggestions that are tailored to the user’s individual needs and re...
In this paper, we study the problem of safe online learning to re-rank, where user feedback is used ...
Non-stationarity appears in many online applications such as web search and advertising. In this pap...
Online Learning to Rank (OLTR) methods optimize ranking models by directly interacting with users, w...
International audienceAlgorithms for learning to rank Web documents, display ads, or other types of ...
As retrieval systems become more complex, learning to rank approaches are being developed to automat...
Abstract. As retrieval systems become more complex, learning to rank approa-ches are being developed...
Modern search systems are based on dozens or even hundreds of ranking features. The dueling bandit g...
Modern search systems are based on dozens or even hundreds of ranking features. The dueling bandit g...
International audienceWe tackle, in the multiple-play bandit setting, the online ranking problem of ...
In Online Learning to Rank (OLTR) the aim is to find an optimal ranking model by interacting with us...
In every domain where a service or a product is provided, an important question is that of evaluatio...
The probabilistic ranking principle advocates ranking documents in order of de-creasing probability ...
International audienceWe tackle the online ranking problem of assigning L items to K positions on a ...
In this paper we give an overview of and outlook on research at the intersection of information retr...
Recommender systems make product suggestions that are tailored to the user’s individual needs and re...
In this paper, we study the problem of safe online learning to re-rank, where user feedback is used ...
Non-stationarity appears in many online applications such as web search and advertising. In this pap...
Online Learning to Rank (OLTR) methods optimize ranking models by directly interacting with users, w...
International audienceAlgorithms for learning to rank Web documents, display ads, or other types of ...
As retrieval systems become more complex, learning to rank approaches are being developed to automat...
Abstract. As retrieval systems become more complex, learning to rank approa-ches are being developed...
Modern search systems are based on dozens or even hundreds of ranking features. The dueling bandit g...
Modern search systems are based on dozens or even hundreds of ranking features. The dueling bandit g...
International audienceWe tackle, in the multiple-play bandit setting, the online ranking problem of ...
In Online Learning to Rank (OLTR) the aim is to find an optimal ranking model by interacting with us...
In every domain where a service or a product is provided, an important question is that of evaluatio...
The probabilistic ranking principle advocates ranking documents in order of de-creasing probability ...
International audienceWe tackle the online ranking problem of assigning L items to K positions on a ...
In this paper we give an overview of and outlook on research at the intersection of information retr...
Recommender systems make product suggestions that are tailored to the user’s individual needs and re...