Current word sense disambiguation (WSD) systems based on supervised learning are still limited in that they do not work well for all words in a language. One of the main reasons is the lack of sufficient training data. In this paper, we investigate the use of unlabeled training data for WSD, in the framework of semi-supervised learning. Four semisupervised learning algorithms are evaluated on 29 nouns of Senseval-2 (SE2) English lexical sample task and SE2 English all-words task. Empirical results show that unlabeled data can bring significant improvement in WSD accuracy
This paper discuss various technique of word sense disambiguation. In WSD we disambiguate the correc...
Word sense disambiguation algorithms, with few exceptions, have made use of only one lexical knowled...
A critical problem faced by current supervised WSD systems is the lack of manually annotated trainin...
Current word sense disambiguation (WSD) systems based on supervised learning are still limited in th...
Word sense disambiguation (WSD) is the problem of determining the right sense of a polysemous word i...
Word sense disambiguation (WSD) is the problem of determining the right sense of a polysemous word i...
We present an unsupervised approach to Word Sense Disambiguation (WSD). We automatically acquire Eng...
A central problem of word sense disambiguation (WSD) is the lack of manually sense-tagged data requi...
We present a novel almost-unsupervised approach to the task of Word Sense Disambiguation (WSD). We b...
Current Word Sense Disambiguation systems show an extremely poor performance on low frequent senses,...
Current Word Sense Disambiguation systems show an extremely poor performance on low fre- quent sense...
Word Sense Disambiguation (WSD) is an important area which has an impact on improving the performanc...
Supervised word sense disambiguation (WSD) for truly polysemous words (in contrast to homonyms) is d...
We present a novel almost-unsupervised approach to the task of Word Sense Disambiguation (WSD). We b...
Abstract. This paper studies the performance of various classifiers for Word Sense Disambiguation co...
This paper discuss various technique of word sense disambiguation. In WSD we disambiguate the correc...
Word sense disambiguation algorithms, with few exceptions, have made use of only one lexical knowled...
A critical problem faced by current supervised WSD systems is the lack of manually annotated trainin...
Current word sense disambiguation (WSD) systems based on supervised learning are still limited in th...
Word sense disambiguation (WSD) is the problem of determining the right sense of a polysemous word i...
Word sense disambiguation (WSD) is the problem of determining the right sense of a polysemous word i...
We present an unsupervised approach to Word Sense Disambiguation (WSD). We automatically acquire Eng...
A central problem of word sense disambiguation (WSD) is the lack of manually sense-tagged data requi...
We present a novel almost-unsupervised approach to the task of Word Sense Disambiguation (WSD). We b...
Current Word Sense Disambiguation systems show an extremely poor performance on low frequent senses,...
Current Word Sense Disambiguation systems show an extremely poor performance on low fre- quent sense...
Word Sense Disambiguation (WSD) is an important area which has an impact on improving the performanc...
Supervised word sense disambiguation (WSD) for truly polysemous words (in contrast to homonyms) is d...
We present a novel almost-unsupervised approach to the task of Word Sense Disambiguation (WSD). We b...
Abstract. This paper studies the performance of various classifiers for Word Sense Disambiguation co...
This paper discuss various technique of word sense disambiguation. In WSD we disambiguate the correc...
Word sense disambiguation algorithms, with few exceptions, have made use of only one lexical knowled...
A critical problem faced by current supervised WSD systems is the lack of manually annotated trainin...