In this paper we present a clean, yet effective, model for word sense disambiguation. Our approach leverage a bidirectional long short-term memory network which is shared between all words. This enables the model to share statistical strength and to scale well with vocabularysize. The model is trained end-to-end, directly from the raw text to sense labels, and makes effective use of word order. We evaluate our approach on two standard datasets, using identical hyperparameter settings, which are in turn tuned on a third set of held out data. We employ no external resources (e.g. knowledge graphs, part-of-speech tagging, etc), language specific features, or hand crafted rules, but still achieve statistically equivalent results to the best sta...
[[abstract]]We present an unsupervised learning strategy for word sense disambiguation (WSD) that ex...
Word sense disambiguation is a core problem in many tasks related to language processing. In this pa...
Supervised word sense disambiguation (WSD) for truly polysemous words (in contrast to homonyms) is d...
In this paper we present a clean, yet effective, model for word sense disambiguation. Our approach l...
Recently, Yuan et al. (2016) have shown the effectiveness of using Long Short-Term Memory (LSTM) for...
LSTM-based language models have been shown effective in Word Sense Disambiguation (WSD). In particul...
Word Sense Disambiguation models exist in many flavors. Even though supervised ones tend to perform ...
Word sense disambiguation algorithms, with few exceptions, have made use of only one lexical knowled...
Most word representation methods assume that each word owns a single semantic vec-tor. This is usual...
Word sense disambiguation (WSD) is a challenging natural language processing (NLP) problem. We propo...
We introduce a new method for unsupervised knowledge-based word sense disambiguation (WSD) based on ...
This paper describes a new Word Sense Disambiguation (WSD) algorithm which extends two well-known va...
This paper demonstrates that word sense disambiguation (WSD) can improve neural machine translation ...
This paper demonstrates that word sense disambiguation (WSD) can improve neural machine translation ...
There has been a tradition of combining different knowledge sources in Artificial Intelligence resea...
[[abstract]]We present an unsupervised learning strategy for word sense disambiguation (WSD) that ex...
Word sense disambiguation is a core problem in many tasks related to language processing. In this pa...
Supervised word sense disambiguation (WSD) for truly polysemous words (in contrast to homonyms) is d...
In this paper we present a clean, yet effective, model for word sense disambiguation. Our approach l...
Recently, Yuan et al. (2016) have shown the effectiveness of using Long Short-Term Memory (LSTM) for...
LSTM-based language models have been shown effective in Word Sense Disambiguation (WSD). In particul...
Word Sense Disambiguation models exist in many flavors. Even though supervised ones tend to perform ...
Word sense disambiguation algorithms, with few exceptions, have made use of only one lexical knowled...
Most word representation methods assume that each word owns a single semantic vec-tor. This is usual...
Word sense disambiguation (WSD) is a challenging natural language processing (NLP) problem. We propo...
We introduce a new method for unsupervised knowledge-based word sense disambiguation (WSD) based on ...
This paper describes a new Word Sense Disambiguation (WSD) algorithm which extends two well-known va...
This paper demonstrates that word sense disambiguation (WSD) can improve neural machine translation ...
This paper demonstrates that word sense disambiguation (WSD) can improve neural machine translation ...
There has been a tradition of combining different knowledge sources in Artificial Intelligence resea...
[[abstract]]We present an unsupervised learning strategy for word sense disambiguation (WSD) that ex...
Word sense disambiguation is a core problem in many tasks related to language processing. In this pa...
Supervised word sense disambiguation (WSD) for truly polysemous words (in contrast to homonyms) is d...