基于语料库的拟人词性别识别方法

Names Pub Date : 2021-08-16 DOI:10.5195/names.2021.2238
Rogelio Nazar,Irene Renau,Nicolas Acosta,Hernan Robledo,Maha Soliman,Sofıa Zamora
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引用次数: 0

摘要

本文提出了一套基于大语料库中专名与词的共现性和语法特征自动确定专名性别的方法。虽然得到的结果是针对西班牙语的名字,但这里介绍的方法可以很容易地复制并用于其他语言的名字。文献中报道的大多数方法使用预先存在的名字列表,这需要昂贵的人工处理,而且往往很快就会过时。相反,我们建议使用语料库。这样做提供了获得真实和最新的姓名-性别链接的可能性。为了测试我们方法的有效性,我们探索了各种机器学习方法以及另一种基于简单共现频率的方法。后者产生了最好的结果:在大约10,000个混合名字的数据库中,准确率为93%,召回率为88%。我们的方法可以应用于各种自然语言处理任务,如信息提取、机器翻译、回指解析或大规模交付或电子邮件通信等。
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Corpus-Based Methods for Recognizing the Gender of Anthroponyms
This paper presents a series of methods for automatically determining the gender of proper names, based on their co-occurrence with words and grammatical features in a large corpus. Although the results obtained were for Spanish given names, the method presented here can be easily replicated and used for names in other languages. Most methods reported in the literature use pre-existing lists of first names that require costly manual processing and tend to become quickly outdated. Instead, we propose using corpora. Doing so offers the possibility of obtaining real and up-to-date name-gender links. To test the effectiveness of our method, we explored various machine-learning methods as well as another method based on simple frequency of co-occurrence. The latter produced the best results: 93% precision and 88% recall on a database of ca. 10,000 mixed names. Our method can be applied to a variety of natural language processing tasks such as information extraction, machine translation, anaphora resolution or large-scale delivery or email correspondence, among others.
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Revised Typology of Place-Naming “Boundary-Maintenance” or “Boundary-Crossing”? Name-Giving Practices among Immigrants in Germany Corpus-Based Methods for Recognizing the Gender of Anthroponyms
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