In this paper we give an overview of and outlook on research at the intersection of information retrieval (IR) and contextual bandit problems. A critical problem in information retrieval is online learning to rank, where a search engine strives to improve the quality of the ranked result lists it presents to users on the ba-sis of those users ’ interactions with those result lists. Recently, researchers have started to model interactions between users and search engines as contextual ban-dit problems, and initial methods for learning in this setting have been devised. Our research focuses on two aspects: balancing exploration and exploitation and inferring preferences from implicit user interactions. This paper summarizes our recent work on...
We present an on-line learning framework tailored towards real-time learning from observed user beha...
As retrieval systems become more complex, learning to rank approaches are being developed to automat...
National audienceThis paper presents a work on a comparison between a user model and user's behavior...
In this paper we give an overview of and outlook on research at the intersection of information retr...
In this article we give an overview of our recent work on online learning to rank for information re...
Learning techniques can be applied to help information retrieval systems adapt to users' specific ne...
Learning techniques can be applied to help information retrieval systems adapt to users' specif...
The amount of digital data we produce every day far surpasses our ability to process this data, and ...
Abstract. As retrieval systems become more complex, learning to rank approa-ches are being developed...
Ranking system is the core part of modern retrieval and recommender systems, where the goal is to ra...
This monograph provides an overview of bandit algorithms inspired by various aspects of Information ...
Given a repeatedly issued query and a document with a not-yet-confirmed potential to satisfy the use...
The cold-start problem has attracted extensive attention among various online services that provide ...
International audienceAlgorithms for learning to rank Web documents, display ads, or other types of ...
Context affects all aspects of Information Retrieval. A searcher's context affects how they interact...
We present an on-line learning framework tailored towards real-time learning from observed user beha...
As retrieval systems become more complex, learning to rank approaches are being developed to automat...
National audienceThis paper presents a work on a comparison between a user model and user's behavior...
In this paper we give an overview of and outlook on research at the intersection of information retr...
In this article we give an overview of our recent work on online learning to rank for information re...
Learning techniques can be applied to help information retrieval systems adapt to users' specific ne...
Learning techniques can be applied to help information retrieval systems adapt to users' specif...
The amount of digital data we produce every day far surpasses our ability to process this data, and ...
Abstract. As retrieval systems become more complex, learning to rank approa-ches are being developed...
Ranking system is the core part of modern retrieval and recommender systems, where the goal is to ra...
This monograph provides an overview of bandit algorithms inspired by various aspects of Information ...
Given a repeatedly issued query and a document with a not-yet-confirmed potential to satisfy the use...
The cold-start problem has attracted extensive attention among various online services that provide ...
International audienceAlgorithms for learning to rank Web documents, display ads, or other types of ...
Context affects all aspects of Information Retrieval. A searcher's context affects how they interact...
We present an on-line learning framework tailored towards real-time learning from observed user beha...
As retrieval systems become more complex, learning to rank approaches are being developed to automat...
National audienceThis paper presents a work on a comparison between a user model and user's behavior...