ISPRS International Journal of Geo-Information (Nov 2022)

Geographic Named Entity Recognition by Employing Natural Language Processing and an Improved BERT Model

  • Liufeng Tao,
  • Zhong Xie,
  • Dexin Xu,
  • Kai Ma,
  • Qinjun Qiu,
  • Shengyong Pan,
  • Bo Huang

DOI
https://doi.org/10.3390/ijgi11120598
Journal volume & issue
Vol. 11, no. 12
p. 598

Abstract

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Toponym recognition, or the challenge of detecting place names that have a similar referent, is involved in a number of activities connected to geographical information retrieval and geographical information sciences. This research focuses on recognizing Chinese toponyms from social media communications. While broad named entity recognition methods are frequently used to locate places, their accuracy is hampered by the many linguistic abnormalities seen in social media posts, such as informal sentence constructions, name abbreviations, and misspellings. In this study, we describe a Chinese toponym identification model based on a hybrid neural network that was created with these linguistic inconsistencies in mind. Our method adds a number of improvements to a standard bidirectional recurrent neural network model to help with location detection in social media messages. We demonstrate the results of a wide-ranging evaluation of the performance of different supervised machine learning methods, which have the natural advantage of avoiding human design features. A set of controlled experiments with four test datasets (one constructed and three public datasets) demonstrates the performance of supervised machine learning that can achieve good results on the task, significantly outperforming seven baseline models.

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