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http://hdl.handle.net/10174/9454
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Title: | PSO-Tagger: A New Biologically Inspired Approach to the Part-of-Speech Tagging Problem |
Authors: | Silva, Ana Paula Silva, Arlindo Pimenta Rodrigues, Irene |
Editors: | Tomassini, Marco Antonioni, Alberto Daolio, Fabio Buesser, Pierre |
Keywords: | PLN Postagging |
Issue Date: | Apr-2013 |
Publisher: | Springer |
Citation: | Ana Paula Silva, Arlindo Silva, Irene Rodrigues. PSO-Tagger: A New Biologically Inspired Approach to the Part-of-Speech Tagging Problem. Adaptive and Natural Computing Algorithms
Lecture Notes in Computer Science Volume 7824, 2013, pp 90-99. |
Abstract: | In this paper we present an approach to the part-of-speech tagging problem based on particle swarm optimization. The part-of-speech tagging is a key input feature for several other natural language processing tasks, like phrase chunking and named entity recognition. A tagger is a system that should receive a text, made of sentences, and, as output, should return the same text, but with each of its words associated with the correct part-of-speech tag. The task is not straightforward, since a large percentage of words have more than one possible part-of-speech tag, and the right choice is determined by the part-of- speech tags of the surrounding words, which can also have more than one possible tag. In this work we investigate the possibility of using a particle swarm optimization algorithm to solve the part-of-speech tagging problem supported by a set of disambiguation rules. The results we obtained on two different corpora are amongst the best ones published for those corpora. |
URI: | http://hdl.handle.net/10174/9454 |
Type: | bookPart |
Appears in Collections: | INF - Publicações - Capítulos de Livros
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