3.9 Article

A Levenshtein distance-based method for word segmentation in corpus augmentation of geoscience texts

期刊

ANNALS OF GIS
卷 29, 期 2, 页码 293-306

出版社

TAYLOR & FRANCIS LTD
DOI: 10.1080/19475683.2023.2165543

关键词

Geoscience; corpus augmentation; word segmentation; Chinese

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In this study, a corpus augmentation method based on Levenshtein distance was proposed to enrich the geoscience corpus by constructing a geoscience dictionary and calculating the distance between words. A Chinese word segmentation model combining BERT, Bi-GRU, and CRF was implemented. Experimental results showed significant performance improvement of the proposed method, indicating great potential for natural language processing tasks like named entity recognition and relation extraction.
For geoscience text, rich domain corpora have become the basis of improving the model performance in word segmentation. However, the lack of domain-specific corpus with annotation labelled has become a major obstacle to professional information mining in geoscience fields. In this paper, we propose a corpus augmentation method based on Levenshtein distance. According to the technique, a geoscience dictionary of 20,137 words was collected and constructed by crawling the keywords from published papers in China National Knowledge Infrastructure (CNKI). The dictionary was further used as the main source of synonyms to enrich the geoscience corpus according to the Levenshtein distance between words. Finally, a Chinese word segmentation model combining the BERT, Bi-gated recurrent neural network (Bi-GRU), and conditional random fields (CRF) was implemented. Geoscience corpus composed of complex long specific vocabularies has been selected to test the proposed word segmentation framework. CNN-LSTM, Bi-LSTM-CRF, and Bi-GRU-CRF models were all selected to evaluate the effects of Levenshtein data augmentation technique. Experiments results prove that the proposed methods achieve a significant performance improvement of more than 10%. It has great potential for natural languages processing tasks like named entity recognition and relation extraction.

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