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Chinese Fine‐Grained Geological Named Entity Recognition With Rules and FLAT

Siying Chen, Weihua Hua, Xiuguo Liu, Xiaotong Deng, Xinling Zeng, Jianchao Duan

2022Earth and Space Science12 citationsDOIOpen Access PDF

Abstract

Abstract Geological named entity recognition (NER) is an essential prerequisite to realizing geological information extraction and information retrieval and is an actual means for accomplishing structured reconstruction of unstructured geological data. Existing geological NER methods mainly focus on coarse‐grained geological entity recognition, but geological entities are fine‐grained. To solve this problem, a Chinese fine‐grained geological entity corpus encompassing 21 types of fine‐grained labels is constructed. In addition, in this article, a fine‐grained geological entity recognition model based on Bidirectional Encoder Representations from Transformer (BERT)‐Flat‐Lattice Transformer is designed. This paper names this method FGNER ( F ine‐grained G eological N amed E ntity R ecognition) which adds geological naming rules to revise the model results to improve the recognition of complex geological entities. The fine‐grained geological entity recognition method is evaluated using regional geological literature reports as experimental data. The experimental results show that the precision, recall, and F1‐score of the FGNER model are 95.73%, 89.26%, and 92.05%, respectively, thus achieving better performance than baseline models, such as BERT‐Conditional Random Field.

Topics & Concepts

Conditional random fieldNamed-entity recognitionComputer scienceNatural language processingGeologic mapInformation extractionTransformerPrecision and recallInformation retrievalField (mathematics)Artificial intelligenceData miningPattern recognition (psychology)GeologyPaleontologyVoltageTask (project management)Quantum mechanicsMathematicsPhysicsEconomicsManagementPure mathematicsTopic ModelingGenomics and Phylogenetic StudiesBiomedical Text Mining and Ontologies