BACKGROUND: Word representations support a variety of Natural Language Processing (NLP) tasks. The quality of these representations is typically assessed by comparing the distances in the induced vector spaces against human similarity judgements. Whereas comprehensive evaluation resources have recently been developed for the general domain, similar resources for biomedicine currently suffer from the lack of coverage, both in terms of word types included and with respect to the semantic distinctions. Notably, verbs have been excluded, although they are essential for the interpretation of biomedical language. Further, current resources do not discern between semantic similarity and semantic relatedness, although this has been proven as an imp...
Abstract Background Recent advances in representation learning have enabled large strides in natural...
Background: VerbNet, an extensive computational verb lexicon for English, has proved useful for supp...
Abstract: Background: Recent advances in representation learning have enabled large strides in natur...
Abstract Background Word representations support a variety of Natural Language Processing (NLP) task...
Word representations are mathematical objects which capture the semantic and syntactic properties of...
Evaluation Dataset: Samples/words in Bio-SimVerb (verbs) and Bio-SimLex (nouns) are collected from a...
Text representations ar one of the main inputs to various Natural Language Processing (NLP) methods....
Due to the recent advances in unsupervised language processing methods, it’s now possible to use lar...
Abstract Background VerbNet, an extensive computational verb lexicon for English, has proved useful ...
Biomedical Named Entity Recognition (BNER), which extracts important entities such as genes and prot...
BACKGROUND: Recent advances in representation learning have enabled large strides in natural languag...
BackgroundRecent advances in representation learning have enabled large strides in natural language ...
AbstractBackgroundBiomedical natural language processing (NLP) applications that have access to deta...
Abstract Background VerbNet, an extensive computat...
Biomedical Named Entity Recognition (BNER), which extracts important entities such as genes and prot...
Abstract Background Recent advances in representation learning have enabled large strides in natural...
Background: VerbNet, an extensive computational verb lexicon for English, has proved useful for supp...
Abstract: Background: Recent advances in representation learning have enabled large strides in natur...
Abstract Background Word representations support a variety of Natural Language Processing (NLP) task...
Word representations are mathematical objects which capture the semantic and syntactic properties of...
Evaluation Dataset: Samples/words in Bio-SimVerb (verbs) and Bio-SimLex (nouns) are collected from a...
Text representations ar one of the main inputs to various Natural Language Processing (NLP) methods....
Due to the recent advances in unsupervised language processing methods, it’s now possible to use lar...
Abstract Background VerbNet, an extensive computational verb lexicon for English, has proved useful ...
Biomedical Named Entity Recognition (BNER), which extracts important entities such as genes and prot...
BACKGROUND: Recent advances in representation learning have enabled large strides in natural languag...
BackgroundRecent advances in representation learning have enabled large strides in natural language ...
AbstractBackgroundBiomedical natural language processing (NLP) applications that have access to deta...
Abstract Background VerbNet, an extensive computat...
Biomedical Named Entity Recognition (BNER), which extracts important entities such as genes and prot...
Abstract Background Recent advances in representation learning have enabled large strides in natural...
Background: VerbNet, an extensive computational verb lexicon for English, has proved useful for supp...
Abstract: Background: Recent advances in representation learning have enabled large strides in natur...