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

IF 2.7 Q1 GEOGRAPHY
Jinqu Zhang, Lang Qian, Shu Wang, Yunqiang Zhu, Zhenji Gao, Hailong Yu, Weirong Li
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引用次数: 0

Abstract

ABSTRACT 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.
基于Levenshtein距离的地学文本语料库扩充分词方法
摘要对于地学文本,富领域语料库已成为提高模型分词性能的基础。然而,缺乏带有标注的领域特定语料库已成为地球科学领域专业信息挖掘的主要障碍。本文提出了一种基于Levenshtein距离的语料库增强方法。根据该技术,通过从中国知网(CNKI)的已发表论文中抓取关键词,收集并构建了一个包含20,137个单词的地球科学词典。根据Levenshtein距离,进一步将该词典作为同义词的主要来源来丰富地学语料库。最后,实现了BERT、双门递归神经网络(Bi-GRU)和条件随机场(CRF)相结合的中文分词模型。选择由复杂长特定词汇组成的地球科学语料库来测试所提出的分词框架。选择CNN-LSTM、Bi-LSTM-CRF和Bi-GRU-CRF模型来评估Levenshtein数据增强技术的效果。实验结果表明,该方法的性能提高了10%以上。它在命名实体识别和关系提取等自然语言处理任务中具有巨大的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Annals of GIS
Annals of GIS Multiple-
CiteScore
8.30
自引率
2.00%
发文量
31
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