Supervised models for Word Sense Disambiguation (WSD) currently yield to state-of-the-art results in the most popular benchmarks. Despite the recent introduction of Word Embeddings and Recurrent Neural Networks to design powerful context-related features, the interest in improving WSD models using Semantic Lexical Resources (SLRs) is mostly restricted to knowledge-based approaches. In this paper, we enhance “modern” supervised WSD models exploiting two popular SLRs: WordNet and WordNet Domains. We propose an effective way to introduce semantic features into the classifiers, and we consider using the SLR structure to augment the training data. We study the effect of different types of semantic features, investigating their interaction with l...
Verbs that can have more than one meaning pose problems for Natural Language Processing (NLP) applic...
Word sense disambiguation algorithms, with few exceptions, have made use of only one lexical knowled...
We propose a supervised approach to word sense disambiguation (WSD), based on neural networks combin...
Supervised models for Word Sense Disambiguation (WSD) currently yield to state-of-the-art results in...
Supervised word sense disambiguation (WSD) for truly polysemous words (in contrast to homonyms) is d...
We introduce a new method for unsupervised knowledge-based word sense disambiguation (WSD) based on ...
Most word representation methods assume that each word owns a single semantic vec-tor. This is usual...
International audienceIn this article, we tackle the issue of the limited quantity of manually sense...
As empirically demonstrated by the Word Sense Disambiguation (WSD) tasks of the last SensEval/SemEva...
Current research in knowledge-based Word Sense Disambiguation (WSD) indicates that performances depe...
Unsupervised and Supervised Exploitation of Semantic Domains in Lexical Disambiguation Domains are...
Word Sense Disambiguation (WSD) aims at making explicit the semantics of a word in context by identi...
Contextualized word embeddings have been employed effectively across several tasks in Natural Langua...
In this paper we present a novel approach to learning semantic models for multiple domains, which we...
Domains are common areas of human discussion, such as economics, politics, law, science, etc., which...
Verbs that can have more than one meaning pose problems for Natural Language Processing (NLP) applic...
Word sense disambiguation algorithms, with few exceptions, have made use of only one lexical knowled...
We propose a supervised approach to word sense disambiguation (WSD), based on neural networks combin...
Supervised models for Word Sense Disambiguation (WSD) currently yield to state-of-the-art results in...
Supervised word sense disambiguation (WSD) for truly polysemous words (in contrast to homonyms) is d...
We introduce a new method for unsupervised knowledge-based word sense disambiguation (WSD) based on ...
Most word representation methods assume that each word owns a single semantic vec-tor. This is usual...
International audienceIn this article, we tackle the issue of the limited quantity of manually sense...
As empirically demonstrated by the Word Sense Disambiguation (WSD) tasks of the last SensEval/SemEva...
Current research in knowledge-based Word Sense Disambiguation (WSD) indicates that performances depe...
Unsupervised and Supervised Exploitation of Semantic Domains in Lexical Disambiguation Domains are...
Word Sense Disambiguation (WSD) aims at making explicit the semantics of a word in context by identi...
Contextualized word embeddings have been employed effectively across several tasks in Natural Langua...
In this paper we present a novel approach to learning semantic models for multiple domains, which we...
Domains are common areas of human discussion, such as economics, politics, law, science, etc., which...
Verbs that can have more than one meaning pose problems for Natural Language Processing (NLP) applic...
Word sense disambiguation algorithms, with few exceptions, have made use of only one lexical knowled...
We propose a supervised approach to word sense disambiguation (WSD), based on neural networks combin...