International audienceAutomatic query expansion techniques are widely applied for improving text retrieval performance, using a variety of approaches that exploit several data sources for finding expansion terms. Selecting expansion terms is challenging and requires a framework capable of extracting term relationships. Recently, several Natural Language Processing methods , based on Deep Learning, are proposed for learning high quality vector representations of terms from large amounts of unstructured text data with billions of words. These high quality vector representations capture a large number of term relationships. In this paper, we experimentally compare several expansion methods with expansion using these term vector representations...
In this work, we study recent advances in context-sensitive language models for the task of query ex...
In this article, the use of a new term extraction method for query expansion (QE) in text retrieval ...
International audienceInformation retrieval aims at retrieving relevant documents answering a user's...
Abstract. Query expansion methods have been studied for a long time – with debatable success in many...
Language Modeling (LM) has been successfully applied to Information Retrieval (IR). However, most of...
Poor information retrieval performance has often been attributed to the query-document vocabulary mi...
Effective search in structured information based on textual user input is of high importance in thou...
Query Expansion using Pseudo Relevance Feedback is a useful and a popular technique for reformulatin...
Abstract—Effective search in structured information based on textual user input is of high importanc...
Patent collection is increasing incrementally. Most of the new technological information is from pat...
We introduce two novel methods for query expansion in information retrieval (IR). The basis of these...
We introduce two novel methods for query expansion in information retrieval (IR). The basis of these...
In this article, the use of a new term extraction method for query expansion (QE) in text retrieval ...
In this work, we study recent advances in context-sensitive language models for the task of query ex...
In this work, we study recent advances in context-sensitive language models for the task of query ex...
In this work, we study recent advances in context-sensitive language models for the task of query ex...
In this article, the use of a new term extraction method for query expansion (QE) in text retrieval ...
International audienceInformation retrieval aims at retrieving relevant documents answering a user's...
Abstract. Query expansion methods have been studied for a long time – with debatable success in many...
Language Modeling (LM) has been successfully applied to Information Retrieval (IR). However, most of...
Poor information retrieval performance has often been attributed to the query-document vocabulary mi...
Effective search in structured information based on textual user input is of high importance in thou...
Query Expansion using Pseudo Relevance Feedback is a useful and a popular technique for reformulatin...
Abstract—Effective search in structured information based on textual user input is of high importanc...
Patent collection is increasing incrementally. Most of the new technological information is from pat...
We introduce two novel methods for query expansion in information retrieval (IR). The basis of these...
We introduce two novel methods for query expansion in information retrieval (IR). The basis of these...
In this article, the use of a new term extraction method for query expansion (QE) in text retrieval ...
In this work, we study recent advances in context-sensitive language models for the task of query ex...
In this work, we study recent advances in context-sensitive language models for the task of query ex...
In this work, we study recent advances in context-sensitive language models for the task of query ex...
In this article, the use of a new term extraction method for query expansion (QE) in text retrieval ...
International audienceInformation retrieval aims at retrieving relevant documents answering a user's...