This paper describes the National Research Council (NRC) Word Sense Disambiguation (WSD) system, as applied to the English Lexical Sample (ELS) task in Senseval-3. The NRC system approaches WSD as a classical supervised machine learning problem, using familiar tools such as the Weka machine learning software and Brill's rule-based part-of-speech tagger. Head words are represented as feature vectors with several hundred features. Approximately half of the features are syntactic and the other half are semantic. The main novelty in the system is the method for generating the semantic features, based on word co-occurrence probabilities. The probabilities are estimated using the Waterloo MultiText System with a corpus of about one terabyte o...
The unavailability of very large corpora with semantically disambiguated words is a major limitation...
Word sense disambiguation algorithms, with few exceptions, have made use of only one lexical knowled...
International audienceThis paper proposes and assesses a new possibilistic approach for automatic mo...
Word Sense Disambiguation, the process of identifying the meaning of a word in a sentence when the w...
An important problem in Natural Language Processing is identifying the correct sense of a word in a ...
Word Sense Disambiguation remains one of the most complex problems facing computational linguists to...
Recent years have seen a dramatic growth in the popularity of word embeddings mainly owing to t...
This book describes the state of the art in Word Sense Disambiguation. Current algorithms and applic...
We describe the results of performing text mining on a challenging problem in natural language proce...
Data sparsity is one of the main factors that make word sense disambiguation (WSD) difficult. To ove...
Supervised word sense disambiguation (WSD) for truly polysemous words (in contrast to homonyms) is d...
Natural Language Processing has been developedto allow human-machine communication to takeplace in a...
We identified features that drive differential accuracy in word sense disambiguation (WSD) by buildi...
Word sense disambiguation (WSD) is a computational linguistics task likely to benefit from the tradi...
In this paper, word sense disambiguation (WSD) ac-curacy achievable by a probabilistic classier, usi...
The unavailability of very large corpora with semantically disambiguated words is a major limitation...
Word sense disambiguation algorithms, with few exceptions, have made use of only one lexical knowled...
International audienceThis paper proposes and assesses a new possibilistic approach for automatic mo...
Word Sense Disambiguation, the process of identifying the meaning of a word in a sentence when the w...
An important problem in Natural Language Processing is identifying the correct sense of a word in a ...
Word Sense Disambiguation remains one of the most complex problems facing computational linguists to...
Recent years have seen a dramatic growth in the popularity of word embeddings mainly owing to t...
This book describes the state of the art in Word Sense Disambiguation. Current algorithms and applic...
We describe the results of performing text mining on a challenging problem in natural language proce...
Data sparsity is one of the main factors that make word sense disambiguation (WSD) difficult. To ove...
Supervised word sense disambiguation (WSD) for truly polysemous words (in contrast to homonyms) is d...
Natural Language Processing has been developedto allow human-machine communication to takeplace in a...
We identified features that drive differential accuracy in word sense disambiguation (WSD) by buildi...
Word sense disambiguation (WSD) is a computational linguistics task likely to benefit from the tradi...
In this paper, word sense disambiguation (WSD) ac-curacy achievable by a probabilistic classier, usi...
The unavailability of very large corpora with semantically disambiguated words is a major limitation...
Word sense disambiguation algorithms, with few exceptions, have made use of only one lexical knowled...
International audienceThis paper proposes and assesses a new possibilistic approach for automatic mo...