Authors
Gerard Escudero, Lluis Marquez, German Rigau
Publication date
2000/5/31
Book
European conference on machine learning
Pages
129-141
Publisher
Springer Berlin Heidelberg
Description
In this paper Schapire and Singer’s AdaBoost.MH boosting algorithm is applied to the Word Sense Disambiguation (WSD) problem. Initial experiments on a set of 15 selected polysemous words show that the boosting approach surpasses Naive Bayes and Exemplar-based approaches, which represent state-of-the-art accuracy on supervised WSD. In order to make boosting practical for a real learning domain of thousands of words, several ways of accelerating the algorithm by reducing the feature space are studied. The best variant, which we call LazyBoosting, is tested on the largest sense-tagged corpus available containing 192,800 examples of the 191 most frequent and ambiguous English words. Again, boosting compares favourably to the other benchmark algorithms.
Total citations
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Scholar articles
G Escudero, L Marquez, G Rigau - European conference on machine learning, 2000