Recently, Yuan et al. (2016) have shown the effectiveness of using Long Short-Term Memory (LSTM) for performing Word Sense Disambiguation (WSD). Their proposed technique outperformed the previous state-of-the-art with several benchmarks, but neither the training data nor the source code was released. This paper presents the results of a reproduction study of this technique using only openly available datasets (GigaWord, SemCore, OMSTI) and software (TensorFlow). From them, it emerged that state-of-the-art results can be obtained with much less data than hinted by Yuan et al. All code and trained models are made freely available
This paper demonstrates that word sense disambiguation (WSD) can improve neural machine translation ...
With state-of-the-art systems having finally attained estimated human performance, Word Sense Disamb...
Abstract: Word sense disambiguation (WSD) is the process of automatically clarifying the meaning of ...
LSTM-based language models have been shown effective in Word Sense Disambiguation (WSD). In particul...
In this paper we present a clean, yet effective, model for word sense disambiguation. Our approach l...
Word sense disambiguation (WSD) is a challenging natural language processing (NLP) problem. We propo...
Word Sense Disambiguation (WSD) is an important but challenging technique in the area of natural lan...
18th FLAIRS Conference, Clearwater Beach, Florida, May 15-17, 2005. Retrieved 6/21/2006 from http://...
Word Sense Disambiguation (WSD) is an important area which has an impact on improving the performanc...
Word sense disambiguation algorithms, with few exceptions, have made use of only one lexical knowled...
Word Sense Disambiguation (WSD) is an important but challenging technique in the area of natural lan...
<div>Trained models for paper:</div><div><br></div><div>Minh Le, Marten Postma, Jacopo Urbani and Pi...
ABSTRACT: Ambiguity and human language have been tangled since the rise of philological communicatio...
A critical problem faced by current supervised WSD systems is the lack of manually annotated trainin...
Word Sense Disambiguation (WSD) aims at making explicit the semantics of a word in context by identi...
This paper demonstrates that word sense disambiguation (WSD) can improve neural machine translation ...
With state-of-the-art systems having finally attained estimated human performance, Word Sense Disamb...
Abstract: Word sense disambiguation (WSD) is the process of automatically clarifying the meaning of ...
LSTM-based language models have been shown effective in Word Sense Disambiguation (WSD). In particul...
In this paper we present a clean, yet effective, model for word sense disambiguation. Our approach l...
Word sense disambiguation (WSD) is a challenging natural language processing (NLP) problem. We propo...
Word Sense Disambiguation (WSD) is an important but challenging technique in the area of natural lan...
18th FLAIRS Conference, Clearwater Beach, Florida, May 15-17, 2005. Retrieved 6/21/2006 from http://...
Word Sense Disambiguation (WSD) is an important area which has an impact on improving the performanc...
Word sense disambiguation algorithms, with few exceptions, have made use of only one lexical knowled...
Word Sense Disambiguation (WSD) is an important but challenging technique in the area of natural lan...
<div>Trained models for paper:</div><div><br></div><div>Minh Le, Marten Postma, Jacopo Urbani and Pi...
ABSTRACT: Ambiguity and human language have been tangled since the rise of philological communicatio...
A critical problem faced by current supervised WSD systems is the lack of manually annotated trainin...
Word Sense Disambiguation (WSD) aims at making explicit the semantics of a word in context by identi...
This paper demonstrates that word sense disambiguation (WSD) can improve neural machine translation ...
With state-of-the-art systems having finally attained estimated human performance, Word Sense Disamb...
Abstract: Word sense disambiguation (WSD) is the process of automatically clarifying the meaning of ...