This paper presents a novel approach for exploiting the global context for the task of word sense disambiguation (WSD). This is done by using topic features constructed using the latent dirichlet allocation (LDA) algorithm on unlabeled data. The features are incorporated into a modified näive Bayes network alongside other features such as part-of-speech of neighboring words, single words in the surrounding context, local collocations, and syntactic patterns. In both the English all-words task and the English lexical sample task, the method achieved significant improvement over the simple näive Bayes classifier and higher accuracy than the best official scores on Senseval-3 for both task. © 2007 Association for Computational Linguistics
Most previous corpus-based algorithms disambiguate a word with a classifier trained from previous us...
Word Sense Disambiguation (WSD) is an important area which has an impact on improving the performanc...
We extend Latent Dirichlet Allocation (LDA) by explicitly allowing for the en-coding of side informa...
Word Sense Disambiguation is an open problem in Natural Language Processing which is particularly ch...
We develop latent Dirichlet allocation with WORDNET (LDAWN), an unsupervised probabilistic topic mod...
We develop latent Dirichlet allocation with WORDNET (LDAWN), an unsupervised probabilistic topic mod...
Computational complexity is a characteristic of almost all Lesk-based algorithms for word sense disa...
The use of topical features is abundant in Natural Language Processing (NLP), a major example being ...
Supervised word sense disambiguation (WSD) for truly polysemous words (in contrast to homonyms) is d...
This paper describes a new Word Sense Disambiguation (WSD) algorithm which extends two well-known va...
Word sense disambiguation algorithms, with few exceptions, have made use of only one lexical knowled...
This paper describes a new Word Sense Disambiguation (WSD) algorithm which extends two well-known va...
Abstract: The paper presents a method for word sense disambiguation (WSD) based on parallel corpora....
Word sense disambiguation (WSD) is a fundamental problem in nature language processing, the objectiv...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Most previous corpus-based algorithms disambiguate a word with a classifier trained from previous us...
Word Sense Disambiguation (WSD) is an important area which has an impact on improving the performanc...
We extend Latent Dirichlet Allocation (LDA) by explicitly allowing for the en-coding of side informa...
Word Sense Disambiguation is an open problem in Natural Language Processing which is particularly ch...
We develop latent Dirichlet allocation with WORDNET (LDAWN), an unsupervised probabilistic topic mod...
We develop latent Dirichlet allocation with WORDNET (LDAWN), an unsupervised probabilistic topic mod...
Computational complexity is a characteristic of almost all Lesk-based algorithms for word sense disa...
The use of topical features is abundant in Natural Language Processing (NLP), a major example being ...
Supervised word sense disambiguation (WSD) for truly polysemous words (in contrast to homonyms) is d...
This paper describes a new Word Sense Disambiguation (WSD) algorithm which extends two well-known va...
Word sense disambiguation algorithms, with few exceptions, have made use of only one lexical knowled...
This paper describes a new Word Sense Disambiguation (WSD) algorithm which extends two well-known va...
Abstract: The paper presents a method for word sense disambiguation (WSD) based on parallel corpora....
Word sense disambiguation (WSD) is a fundamental problem in nature language processing, the objectiv...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Most previous corpus-based algorithms disambiguate a word with a classifier trained from previous us...
Word Sense Disambiguation (WSD) is an important area which has an impact on improving the performanc...
We extend Latent Dirichlet Allocation (LDA) by explicitly allowing for the en-coding of side informa...