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RelANE: Discovering Relations between Arabic Named Entities

机译:Relane:发现阿拉伯语命名实体之间的关系

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In this paper, we describe the first tool that detects the semantic relation between Arabic named entities, henceforth RelANE. We use various supervised learning techniques to predict the word or the sequence of terms that can highlight one or more semantic relationship between two Arabic named entities. For each word in the sentence, we use its morphological, contextual and semantic features of entity types. We do not integrate a relation classes predefined in order to cover more relations that can be presented in sentences. Given that free Arabic corpora for this task are not available, we built our own corpus annotated with the required information. Plenty of experiments are conducted, and the preliminary results proved the effectiveness of our process that allows to extract semantic relation between Arabic NEs. We obtained promising results in terms of F-score when applied to our corpus.
机译:在本文中,我们描述了一种检测阿拉伯语命名实体之间的语义关系的第一个工具,从来,从来开始重新开始。我们使用各种监督的学习技术来预测可以突出两个阿拉伯语命名实体之间的一个或多个语义关系的单词或序列序列。对于句子中的每个单词,我们使用实体类型的形态,上下文和语义特征。我们没有集成预定义的关系类,以便涵盖可以在句子中呈现的更多关系。鉴于此任务的免费阿拉伯语料库不可用,我们构建了我们自己的语料库,其中包含所需信息。进行了大量的实验,初步结果证明了我们的过程的有效性,允许在阿拉伯语NE之间提取语义关系。当应用于我们的语料库时,我们在F-Score方面获得了有希望的结果。

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