集成命名实体识别(NER):评估历史语料库中地名识别中的NER工具

Miguel Won, Patricia Murrieta-Flores, Bruno Martins
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引用次数: 58

摘要

空间人文学科近年来取得了长足的发展。对历史文本集合中提到的地名和空间信息的识别和提取使其以创新的方式使用,使空间分析的应用和地理信息系统对这些地方的映射成为可能。例如,如今使用命名实体识别(NER)系统可以自动识别地名。特别是,基于监督学习的统计NER方法在现代数据集上非常成功。然而,在处理历史语料库时,仍然存在一些重大挑战需要解决。这些挑战包括语言随时间的变化、拼写变化、音译、OCR错误以及用多种语言编写的来源等。在本文中,考虑到两个历史通信集合的地名识别任务,我们报告了五个NER系统的评估以及通过投票系统将这些系统组合在一起的方法。我们发现,尽管每个NER系统的单个性能依赖于语料库,但集成组合能够实现一致的精度和召回率测量,优于单个NER系统。此外,结果表明,这些NER系统并不强烈依赖于预处理和翻译成现代英语。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble Named Entity Recognition (NER): Evaluating NER Tools in the Identification of Place Names in Historical Corpora
The field of Spatial Humanities has advanced substantially in the past years. The identification and extraction of toponyms and spatial information mentioned in historical text collections has allowed its use in innovative ways, making possible the application of spatial analysis and the mapping of these places with Geographic Information Systems. For instance, automated place name identification is nowadays possible with Named Entity Recognition (NER) systems. Statistical NER methods based on supervised learning, in particular, are highly successful with modern datasets. However, there are still major challenges to address when dealing with historical corpora. These challenges include language changes over time, spelling variations, transliterations, OCR errors, and sources written in multiple languages among others. In this article, considering a task of place name recognition over two collections of historical correspondence, we report an evaluation of five NER systems and an approach that combines these through a voting system. We found that although individual performance of each NER system was corpus dependent, the ensemble combination was able to achieve consistent measures of precision and recall, outperforming the individual NER systems. Additionally, the results showed that these NER system are not strongly dependent on pre-processing and translation to modern English.
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