International audienceEliciting semantic similarity between concepts remains a challenging task. Recent approaches founded on embedding vectors have gained in popularity as they have risen to efficiently capture semantic relationships. The underlying idea is that two words that have close meaning gather similar contexts. In this study, we propose a new neural network model, named MeSH-gram, which relies on a straightforward approach that extends the skip-gram neural network model by considering MeSH (Medical Subject Headings) descriptors instead of words. Trained on publicly available PubMed/MEDLINE corpus, MeSH-gram is evaluated on reference standards manually annotated for semantic similarity. MeSH-gram is first compared to skip-gram with...
This entry contains the resources used in and resulting from Eneldo Loza Mencía, Gerard de Melo a...
A large number of embeddings trained on medical data have emerged, but it remains unclear how well t...
Vector based word representation models are often developed from very large corpora. However, we oft...
International audienceEliciting semantic similarity between concepts remains a challenging task. Rec...
Advances in neural network language models have demonstrated that these models can effectively learn...
Abstract Background Neural network based embedding models are receiving significant attention in the...
Evaluating the semantic similarity of two terms is a task central to automated understanding of natu...
This paper investigates the determination of semantic similarity by the incorporation of structural ...
Summarization: Semantic Similarity relates to computing the similarity between concepts (terms) whic...
In recent years, we have seen an increasing amount of interest in low-dimensional vector representat...
Natural language processing models based on machine learning (ML-NLP models) have been developed to ...
The gene ontology (GO) database contains GO terms that describe biological functions of genes. Previ...
Summarization: Semantic Similarity relates to computing the similarity between conceptually similar ...
Currently, all MEDLINE documents are indexed by medical subject headings (MeSH). Computing semantic ...
Recent advances in neural language models have contributed new methods for learning distributed vect...
This entry contains the resources used in and resulting from Eneldo Loza Mencía, Gerard de Melo a...
A large number of embeddings trained on medical data have emerged, but it remains unclear how well t...
Vector based word representation models are often developed from very large corpora. However, we oft...
International audienceEliciting semantic similarity between concepts remains a challenging task. Rec...
Advances in neural network language models have demonstrated that these models can effectively learn...
Abstract Background Neural network based embedding models are receiving significant attention in the...
Evaluating the semantic similarity of two terms is a task central to automated understanding of natu...
This paper investigates the determination of semantic similarity by the incorporation of structural ...
Summarization: Semantic Similarity relates to computing the similarity between concepts (terms) whic...
In recent years, we have seen an increasing amount of interest in low-dimensional vector representat...
Natural language processing models based on machine learning (ML-NLP models) have been developed to ...
The gene ontology (GO) database contains GO terms that describe biological functions of genes. Previ...
Summarization: Semantic Similarity relates to computing the similarity between conceptually similar ...
Currently, all MEDLINE documents are indexed by medical subject headings (MeSH). Computing semantic ...
Recent advances in neural language models have contributed new methods for learning distributed vect...
This entry contains the resources used in and resulting from Eneldo Loza Mencía, Gerard de Melo a...
A large number of embeddings trained on medical data have emerged, but it remains unclear how well t...
Vector based word representation models are often developed from very large corpora. However, we oft...