The state-of-the-art solutions to the vocabulary mismatch in information retrieval (IR) mainly aim at leveraging either the relational semantics provided by external resources or the distributional semantics, recently investigated by deep neural approaches. Guided by the intuition that the relational semantics might improve the effectiveness of deep neural approaches, we propose the Deep Semantic Resource Inference Model (DSRIM) that relies on: 1) a representation of raw-data that models the relational semantics of text by jointly considering objects and relations expressed in a knowledge resource, and 2) an end-to-end neural architecture that learns the query-document relevance by leveraging the distributional and relational semantics of d...
Traditional retrieval models such as BM25 or language models have been engineered based on search he...
A recent "third wave'' of neural network (NN) approaches now delivers state-of-the-art performance i...
In recent years, deep neural networks have yielded significant performance improvements on speech re...
International audienceTackling the vocabulary mismatch has been a long-standing and major goal in in...
The semantic mismatch between query and document terms-i.e., the semantic gap-is a long-standing pro...
International audienceThis paper tackles the problem of the semantic gap between a document and a qu...
Le projet de thèse porte sur l'application des approches neuronales pour la représentation de textes...
International audiencePrevious work in information retrieval have shown that using evidence, such as...
In this thesis, we focus on bridging the semantic gap between the documents and queries representati...
The semantic gap between queries and documents is a longstanding problem in Information Retrieval (I...
International audiencePrevious work in information retrieval (IR) have shown that using evidence, su...
In this thesis we tackle the semantic gap, a long-standing problem in Information Retrieval(IR). The...
Most neural Information Retrieval (Neu-IR) models derive query-to-document ranking scores based on t...
Neural networks with deep architectures have demonstrated significant performance improvements in co...
Ad-hoc retrieval models can benefit from considering different patterns in the interactions between ...
Traditional retrieval models such as BM25 or language models have been engineered based on search he...
A recent "third wave'' of neural network (NN) approaches now delivers state-of-the-art performance i...
In recent years, deep neural networks have yielded significant performance improvements on speech re...
International audienceTackling the vocabulary mismatch has been a long-standing and major goal in in...
The semantic mismatch between query and document terms-i.e., the semantic gap-is a long-standing pro...
International audienceThis paper tackles the problem of the semantic gap between a document and a qu...
Le projet de thèse porte sur l'application des approches neuronales pour la représentation de textes...
International audiencePrevious work in information retrieval have shown that using evidence, such as...
In this thesis, we focus on bridging the semantic gap between the documents and queries representati...
The semantic gap between queries and documents is a longstanding problem in Information Retrieval (I...
International audiencePrevious work in information retrieval (IR) have shown that using evidence, su...
In this thesis we tackle the semantic gap, a long-standing problem in Information Retrieval(IR). The...
Most neural Information Retrieval (Neu-IR) models derive query-to-document ranking scores based on t...
Neural networks with deep architectures have demonstrated significant performance improvements in co...
Ad-hoc retrieval models can benefit from considering different patterns in the interactions between ...
Traditional retrieval models such as BM25 or language models have been engineered based on search he...
A recent "third wave'' of neural network (NN) approaches now delivers state-of-the-art performance i...
In recent years, deep neural networks have yielded significant performance improvements on speech re...