International audienceModern Information Retrieval (IR) systems become more and more complex, involving a large number of parameters. For example, a system may choose from a set of possible retrieval models (BM25, language model, etc.), or various query expansion parameters, whose values greatly influence the overall retrieval effectiveness. Traditionally, these parameters are set at system level based on training queries, and the same parameters are then used for different queries. We observe that it may not be easy to set all these parameters separately since they can be dependent. In addition, a global setting for all queries may not best fit all individual queries with different characteristics. The parameters should be set according to...
Search engines are based on models to index documents, match queries and documents and rank document...
The paper is concerned with applying learning to rank to document retrieval. Ranking SVM is a typica...
Ranking is the central problem for information retrieval (IR), and employing machine learning techni...
Modern Information Retrieval (IR) systems become more and more complex, involving a large number of ...
International audienceInformation Retrieval (IR) systems heavily rely on a large number of parameter...
International audienceThis paper presents a method that automatically decides which system configur...
International audienceThis paper presents a method that automatically decides which system configur...
This paper presents a method that automatically decides which system configuration should be used to...
This paper presents a method that automatically decides which system configuration should be used t...
International audienceSearch engines aim at delivering the most relevant information whatever the qu...
Abstract. Current learning to rank approaches commonly focus on learning the best possible ranking f...
International audienceSearch engines are based on models to index documents, match queries and docum...
International audienceSearch engines are based on models to index documents, match queries and docum...
This paper is concerned with learning to rank for information retrieval (IR). Ranking is the central...
International audienceIn this paper we promote a selective information retrieval process to be appli...
Search engines are based on models to index documents, match queries and documents and rank document...
The paper is concerned with applying learning to rank to document retrieval. Ranking SVM is a typica...
Ranking is the central problem for information retrieval (IR), and employing machine learning techni...
Modern Information Retrieval (IR) systems become more and more complex, involving a large number of ...
International audienceInformation Retrieval (IR) systems heavily rely on a large number of parameter...
International audienceThis paper presents a method that automatically decides which system configur...
International audienceThis paper presents a method that automatically decides which system configur...
This paper presents a method that automatically decides which system configuration should be used to...
This paper presents a method that automatically decides which system configuration should be used t...
International audienceSearch engines aim at delivering the most relevant information whatever the qu...
Abstract. Current learning to rank approaches commonly focus on learning the best possible ranking f...
International audienceSearch engines are based on models to index documents, match queries and docum...
International audienceSearch engines are based on models to index documents, match queries and docum...
This paper is concerned with learning to rank for information retrieval (IR). Ranking is the central...
International audienceIn this paper we promote a selective information retrieval process to be appli...
Search engines are based on models to index documents, match queries and documents and rank document...
The paper is concerned with applying learning to rank to document retrieval. Ranking SVM is a typica...
Ranking is the central problem for information retrieval (IR), and employing machine learning techni...