Dense retrieval, which describes the use of contextualised language models such as BERT to identify documents from a collection by leveraging approximate nearest neighbour (ANN) techniques, has been increasing in popularity. Two families of approaches have emerged, depending on whether documents and queries are represented by single or multiple embeddings. ColBERT, the exemplar of the latter, uses an ANN index and approximate scores to identify a set of candidate documents for each query embedding, which are then re-ranked using accurate document representations. In this manner, a large number of documents can be retrieved for each query, hindering the efficiency of the approach. In this work, we investigate the use of ANN scores for rankin...
During the last years, the problem of Content-Based Image Retrieval (CBIR) was addressed in many dif...
Ranking techniques have long been suggested as alternatives to more conventional Boolean methods for...
Neural document ranking approaches, specifically transformer models, have achieved impressive gains ...
Dense retrieval, which describes the use of contextualised language models such as BERT to identify ...
Recent advances in dense retrieval techniques have offered the promise of being able not just to re-...
The advent of contextualised language models has brought gains in search effectiveness, not just whe...
Pseudo-relevance feedback mechanisms, from Rocchio to the relevance models, have shown the usefulnes...
The availability of massive data and computing power allowing for effective data driven neural appro...
Approximate Nearest neighbor search (ANNS) is fundamental and essential operation in applications f...
International audienceOn a wide range of natural language processing and information retrieval tasks...
In the field of information retrieval, Passage related to Query are usually easy to get, and the pas...
Text search engines return a set of k documents ranked by similarity to a query. Typically, document...
Due to the growing amount of available information, learning to rank has become an important researc...
Pseudo-relevance feedback mechanisms, from Rocchio to the relevance models, have shown the usefulnes...
In this paper, we propose a novel scheme for approximate nearest neighbor (ANN) retrieval based on d...
During the last years, the problem of Content-Based Image Retrieval (CBIR) was addressed in many dif...
Ranking techniques have long been suggested as alternatives to more conventional Boolean methods for...
Neural document ranking approaches, specifically transformer models, have achieved impressive gains ...
Dense retrieval, which describes the use of contextualised language models such as BERT to identify ...
Recent advances in dense retrieval techniques have offered the promise of being able not just to re-...
The advent of contextualised language models has brought gains in search effectiveness, not just whe...
Pseudo-relevance feedback mechanisms, from Rocchio to the relevance models, have shown the usefulnes...
The availability of massive data and computing power allowing for effective data driven neural appro...
Approximate Nearest neighbor search (ANNS) is fundamental and essential operation in applications f...
International audienceOn a wide range of natural language processing and information retrieval tasks...
In the field of information retrieval, Passage related to Query are usually easy to get, and the pas...
Text search engines return a set of k documents ranked by similarity to a query. Typically, document...
Due to the growing amount of available information, learning to rank has become an important researc...
Pseudo-relevance feedback mechanisms, from Rocchio to the relevance models, have shown the usefulnes...
In this paper, we propose a novel scheme for approximate nearest neighbor (ANN) retrieval based on d...
During the last years, the problem of Content-Based Image Retrieval (CBIR) was addressed in many dif...
Ranking techniques have long been suggested as alternatives to more conventional Boolean methods for...
Neural document ranking approaches, specifically transformer models, have achieved impressive gains ...