Comparing Open Arabic Named Entity Recognition Tools

Abdullah Aldumaykhi, Saad Otai, Abdulkareem Alsudais
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Abstract

The main objective of this paper is to compare and evaluate the performances of three open Arabic Named Entity Recognition (NER) tools: CAMeL, Hatmi, and Stanza. We collected a corpus consisting of 30 articles written in Modern Standard Arabic (MSA) and manually annotated all the entities of the person, organization, and location types at the article (document) level. Our results suggest a similarity between Stanza and Hatmi with the latter receiving the highest F1 score for the three entity types. However, CAMeL achieved the highest precision values for names of people and organizations. Following this, we implemented a “merge” method that combined the results from the three tools and a “vote” method that tagged named entities only when two of the three identified them as entities. Our results showed that merging achieved the highest overall F1 scores. Moreover, merging had the highest recall values while voting had the highest precision values for the three entity types. This indicates that merging is more suitable when recall is desired, while voting is optimal when precision is required. Finally, we collected a corpus of 21,635 articles related to COVID-19 and applied the merge and vote methods. Our analysis demonstrates the tradeoff between precision and recall for the two methods.
比较开放的阿拉伯语命名实体识别工具
本文的主要目的是比较和评估三种开放的阿拉伯语命名实体识别(NER)工具:CAMeL、Hatmi和Stanza的性能。我们收集了一个由30篇现代标准阿拉伯语(MSA)文章组成的语料库,并在文章(文档)级别手动注释了所有人、组织和位置类型的实体。我们的结果表明Stanza和Hatmi之间存在相似性,后者在三种实体类型中获得最高的F1分数。但是,CAMeL对于人员和组织的名称实现了最高的精度值。在此之后,我们实现了一个“合并”方法,该方法结合了来自三个工具的结果,以及一个“投票”方法,该方法仅在三个工具中的两个将它们标识为实体时才标记命名实体。我们的结果显示,合并获得了最高的F1总分。此外,对于三种实体类型,合并具有最高的召回值,而投票具有最高的精度值。这表明当需要召回时合并更合适,而当需要精度时投票是最优的。最后,我们收集了与COVID-19相关的21,635篇文章的语料库,并应用合并和投票方法。我们的分析证明了两种方法在精度和召回率之间的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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