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Spanish All-Words Semantic Class Disambiguation Using Cast3LB Corpus

机译:使用Cast3LB语料库的西班牙语全语词义类别歧义消除

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摘要

In this paper, an approach to semantic disambiguation based on machine learning and semantic classes for Spanish is presented. A critical issue in a corpus-based approach for Word Sense Disambiguation (WSD) is the lack of wide-coverage resources to automatically learn the linguistic information. In particular, all-words sense annotated corpora such as SemCor do not have enough examples for many senses when used in a machine learning method. Using semantic classes instead of senses allows to collect a larger number of examples for each class while polysemy is reduced, improving the accuracy of semantic disambiguation. Cast3LB, a SemCor-like corpus, manually annotated with Spanish WordNet 1.5 senses, has been used in this paper to perform semantic disambiguation based on several sets of classes: lexicographer files of WordNet, WordNet Domains, and SUMO ontology.
机译:本文提出了一种基于机器学习和西班牙语语义类的语义歧义消除方法。基于语料库的词义歧义消除(WSD)方法中的一个关键问题是缺乏广泛覆盖的资源来自动学习语言信息。尤其是,当在机器学习方法中使用时,诸如SemCor之类的全单词有感觉注释的语料库在许多意义上都没有足够的示例。使用语义类而不是感官,可以在减少多义性的同时为每个类收集大量示例,从而提高了语义消除歧义的准确性。本文已使用Cast3LB(一种类似于SemCor的语料库,并用西班牙语WordNet 1.5感官手动注释)基于几类类执行语义歧义消除:WordNet的词典编辑器文件,WordNet Domains和SUMO本体。

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