The semantic mismatch between query and document terms-i.e., the semantic gap-is a long-standing problem in Information Retrieval (IR). Two main linguistic features related to the semantic gap that can be exploited to improve retrieval are synonymy and polysemy. Recent works integrate knowledge from curated external resources into the learning process of neural language models to reduce the effect of the semantic gap. However, these knowledge-enhanced language models have been used in IR mostly for re-ranking and not directly for document retrieval. We propose the Semantic-Aware Neural Framework for IR (SAFIR), an unsupervised knowledge-enhanced neural framework explicitly tailored for IR. SAFIR jointly learns word, concept, and document re...
We investigate how semantic relations between concepts extracted from medical documents, and linked ...
Employing lexical-semantic knowledge in information retrieval (IR) is recognised as a promising way ...
This research addresses the semantic and knowledge gap problem in information retrieval by proposing...
In this thesis we tackle the semantic gap, a long-standing problem in Information Retrieval(IR). The...
The semantic gap between queries and documents is a longstanding problem in Information Retrieval (I...
International audiencePrevious work in information retrieval have shown that using evidence, such as...
In Information Retrieval (IR), the semantic gap represents the mismatch between users’ queries and h...
In Information Retrieval (IR), the semantic gap represents the mismatch between users’ queries and h...
International audiencePrevious work in information retrieval (IR) have shown that using evidence, su...
The state-of-the-art solutions to the vocabulary mismatch in information retrieval (IR) mainly aim a...
Advances in neural network language models have demonstrated that these models can effectively learn...
Psycholinguistic theories of semantic memory form the basis of understanding of natural language con...
Recent advances in neural language models have contributed new methods for learning distributed vect...
The goal of information retrieval (IR) is to map a natural language query, which specifies the user ...
This dataset contains all the runs, pools, plots and analyses to reproduce the results presented in ...
We investigate how semantic relations between concepts extracted from medical documents, and linked ...
Employing lexical-semantic knowledge in information retrieval (IR) is recognised as a promising way ...
This research addresses the semantic and knowledge gap problem in information retrieval by proposing...
In this thesis we tackle the semantic gap, a long-standing problem in Information Retrieval(IR). The...
The semantic gap between queries and documents is a longstanding problem in Information Retrieval (I...
International audiencePrevious work in information retrieval have shown that using evidence, such as...
In Information Retrieval (IR), the semantic gap represents the mismatch between users’ queries and h...
In Information Retrieval (IR), the semantic gap represents the mismatch between users’ queries and h...
International audiencePrevious work in information retrieval (IR) have shown that using evidence, su...
The state-of-the-art solutions to the vocabulary mismatch in information retrieval (IR) mainly aim a...
Advances in neural network language models have demonstrated that these models can effectively learn...
Psycholinguistic theories of semantic memory form the basis of understanding of natural language con...
Recent advances in neural language models have contributed new methods for learning distributed vect...
The goal of information retrieval (IR) is to map a natural language query, which specifies the user ...
This dataset contains all the runs, pools, plots and analyses to reproduce the results presented in ...
We investigate how semantic relations between concepts extracted from medical documents, and linked ...
Employing lexical-semantic knowledge in information retrieval (IR) is recognised as a promising way ...
This research addresses the semantic and knowledge gap problem in information retrieval by proposing...