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High Quality Arabic Lexical Ontology Based on MUHIT, WordNet, SUMO and DBpedia

机译:基于MUHIT,WordNet,SUMO和DBpedia的高质量阿拉伯词本体

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In this paper, we aim to move ontology-based Arabic NLP forward by experimenting with the generation of a comprehensive Arabic lexical ontology using multiple language resources. We recommend a combination of MUHIT, WordNet and SUMO and use a simple method to link them, which results in the generation of an Arabic-lexicalized version of the SUMO ontology. Then, we evaluate the generated ontology, and propose a method for increasing its named entity coverage using DBpedia, English-to-Arabic Transliteration, and Named Entity Recognition. We end up with an Arabic lexical ontology that has 228K Arabic synsets, linked to 7.8K concepts and 143K instances. This ontology achieves a precision of 96.9% and recall of 75.5% for NLU scenarios.
机译:在本文中,我们旨在通过尝试使用多种语言资源来生成全面的阿拉伯语词汇本体,来推动基于本体的阿拉伯语NLP向前发展。我们建议将MUHIT,WordNet和SUMO结合使用,并使用一种简单的方法将它们链接起来,从而生成SUMO本体的阿拉伯语词汇化版本。然后,我们评估生成的本体,并提出一种使用DBpedia,英语到阿拉伯语音译和命名实体识别来增加其命名实体覆盖率的方法。最后,我们得出一个阿拉伯文词汇本体,该本体具有228K阿拉伯同义词集,与7.8K概念和143K实例相关联。对于NLU场景,该本体的精度达到96.9%,召回率达到75.5%。

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