Abstract

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the literature use pre-existing lists of first names that require costly manual processing and tend to become quickly outdated.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.

Highlights

  • We address the use of corpora for the automatic recognition of the gender of proper names, anthroponyms

  • It can be used to solve problems related to anaphora resolution, a challenge in different natural languageprocessing tasks such as machine translation

  • From all the different types of errors we found, the most frequent (73.4%) involved names that are too infrequent in the analyzed language, Spanish

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Summary

Introduction

We address the use of corpora for the automatic recognition of the gender of proper names, anthroponyms. Automatic detection of the gender of names is very useful for a variety of tasks. It can be used to solve problems related to anaphora resolution, a challenge in different natural languageprocessing tasks such as machine translation. Knowing the gender of the name is a crucial step in solving grammatical agreement correctly, especially when the target language has gender features marked by pronouns or adjectives. It can be applied to large-scale studies about gender bias or other social issues. As this investigation will demonstrate, this work can have practical applications

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