Computer Engineering and Applications ›› 2023, Vol. 59 ›› Issue (19): 52-65.DOI: 10.3778/j.issn.1002-8331.2211-0423
• Research Hotspots and Reviews • Previous Articles Next Articles
SHU Wenhao, XI Xuefeng, CUI Zhiming, GU Chenkai
Online:
2023-10-01
Published:
2023-10-01
束文豪,奚雪峰,崔志明,顾晨凯
SHU Wenhao, XI Xuefeng, CUI Zhiming, GU Chenkai. Study of Named Entity Recognition Based on Graph Neural Network[J]. Computer Engineering and Applications, 2023, 59(19): 52-65.
束文豪, 奚雪峰, 崔志明, 顾晨凯. 图神经网络在命名实体识别中的应用研究[J]. 计算机工程与应用, 2023, 59(19): 52-65.
Add to citation manager EndNote|Ris|BibTeX
URL: http://cea.ceaj.org/EN/10.3778/j.issn.1002-8331.2211-0423
[1] GRISHMAN R,SUNDHEIM B M.Message understanding conference-6:a brief history[C]//Proceedings of the 16th International Conference on Computational Linguistics,1996. [2] THIELEN C.An approach to proper name tagging for German[J].arXiv:cmp-lg/9506024,1995. [3] LEE S,LEE G G.Heuristic methods for reducing errors of geographic named entities learned by bootstrapping[C]//Proceedings of the 2nd International Joint Conference on Natural Language Processing,2005:658-669 [4] FLEISCHMAN M,HOVY E.Fine grained classification of named entities[C]//Proceedings of the 19th International Conference on Computational Linguistics,2002. [5] RAU L F.Extracting company names from text[C]//Proceedings of the 7th IEEE Conference on Artificial Intelligence Application,1991:29-32. [6] 韩春燕,刘玉娇,琚生根,等.中文微博命名实体识别[J].四川大学学报(自然科学版),2015,52(3):511-516. HAN C Y,LIU Y J,JU S G,et al.Named entity recognition in Chinese micro-blog[J].Journal of Sichuan University(Natural Science Edition),2015,52(3):511-516. [7] FENG J,LI Z,ZHANG D.Bridge detection text named entity recognition based on hidden Markov model[J].Traffic World,2020,8:32-33. [8] COLLOBERT R,WESTON J,BOTTOU L,et al.Natural language processing(almost) from scratch[J].Journal of Machine Learning Research,2011,12:2493-2537. [9] CAO Y,ZHOU Y,SHEN F,et al.Research on named entity recognition of Chinese electronic medical records based on CNN-CRF[J].Journal of Chongqing University of Posts and Telecommunications(Natural Science Edition),2019,6:869-875. [10] KONG J,ZHANG L,JIANG M,et al.Incorporating multi-level CNN and attention mechanism for Chinese clinical named entity recognition[J].Journal of Biomedical Informatics,2021,116:103737. [11] HUANG Z,XU W,YU K.Bidirectional LSTM-CRF models for sequence tagging[J].arXiv:1508.01991,2015. [12] YANG H,LI L,YANG R.Recognition model of electronic medical record named entity based on bidirectional LSTM neural network[J].Chinese Tissue Engineering Research,2018,22:3237-3242. [13] JI X,ZHU Y,LI F.Chinese named entity recognition based on Attention-BiLSTM[J].Journal of Hunan Univ Technol,2019,5:14. [14] LIU Y,LI D.Chinese named entity recognition method based on BLSTM-CNN-CRF[J].Journal of Harbin University of Science and Technology,2020,25(1):115-120. [15] YAN H,DENG B,LI X,et al.TENER:adapting transformer encoder for named entity recognition[J].arXiv:1911.04474,2019. [16] 李博,康晓东,张华丽,等.采用Transformer-CRF的中文电子病历命名实体识别[J].计算机工程与应用,2020,56(5):153-159. LI B,KANG X D,ZHANG H L,et al.Named entity recognition in Chinese electronic medical records using Transformer-CRF[J].Computer Engineering and Applications,2020,56(5):153-159. [17] SHEN T,YU L,JIN L.Research on Chinese entity recognition based on BERT-BILSTM-CRF model[J].Journal of Qiqihar University(Natural Science Edition),2022,38(1):26-32. [18] SCARSELLI F,GORI M,TSOI A C,et al.The graph neural network model[J].IEEE Transactions on Neural Networks,2008,20(1):61-80. [19] CHO K,VAN MERRI?NBOER B,GULCEHRE C,et al.Learning phrase representations using RNN encoder-decoder for statistical machine translation[J].arXiv:1406.1078,2014. [20] HOCHREITER S,BENGIO Y,FRASCONI P,et al.Gradient flow in recurrent nets:the difficulty of learning long-term dependencies[M].[S.l.]:Wiley-IEEE Press,2001. [21] LI Y,TARLOW D,BROCKSCHMIDT M,et al.Gated graph sequence neural networks[J].arXiv:1511.05493,2015. [22] LI Y,VINYALS O,DYER C,et al.Learning deep generative models of graphs[J].arXiv:1803.03324,2018. [23] KIPF T N,WELLING M.Semi-supervised classification with graph convolutional networks[J].arXiv:1609.02907,2016. [24] VELI?KOVI? P,CUCURULL G,CASANOVA A,et al.Graph attention networks[J].arXiv:1710.10903,2017. [25] VASWANI A,SHAZEER N,PARMAR N,et al.Attention is all you need[C]//Advances in Neural Information Processing Systems,2017. [26] CHEN C,KONG F.Enhancing entity boundary detection for better Chinese named entity recognition[C]//Proceedings of the 59th Annual Meeting of the Association for Computational Linguistics and the 11th International Joint Conference on Natural Language Processing(Volume 2:Short Papers),2021:20-25. [27] GUO Q,QIU X,LIU P,et al.Star-transformer[J].arXiv:1902.09113,2019. [28] SUI D,CHEN Y,LIU K,et al.Leverage lexical knowledge for Chinese named entity recognition via collaborative graph network[C]//Proceedings of the 2019 Conference on Empirical Methods in Natural Language Processing and the 9th International Joint Conference on Natural Language Processing(EMNLP-IJCNLP),2019:3830-3840. [29] ZHU P,CHENG D,YANG F,et al.Improving Chinese named entity recognition by large-scale syntactic dependency graph[J].IEEE/ACM Transactions on Audio,Speech,and Language Processing,2022,30:979-991. [30] ZHONG Q,TANG Y.Chinese named entity recognition based on gated graph neural network[C]//Proceedings of the International Conference on Knowledge Science,Engineering and Management,2021:604-613. [31] 宋旭晖,于洪涛,李邵梅.基于图注意力网络字词融合的中文命名实体识别[J].计算机工程,2022,48(10):298-305. SONG X H,YU H T,LI S M.Chinese named entity recognition based on word fusion of graph attention network[J].Computer Engineering,2022,48(10):298-305. [32] LEE L H,LU Y.Multiple embeddings enhanced multi-graph neural networks for Chinese healthcare named entity recognition[J].IEEE Journal of Biomedical and Health Informatics,2021,25(7):2801-2810. [33] ZONG J,HAN J.Entity recognition of Chinese electronic medical record based on gated graph neural network[C]//Proceedings of the 14th International Conference on Measuring Technology and Mechatronics Automation(ICMTMA),2022:1208-1213. [34] XIONG Y,PENG H,XIANG Y,et al.Leveraging multi-source knowledge for Chinese clinical named entity recognition via relational graph convolutional network[J].Journal of Biomedical Informatics,2022,128:104035. [35] ZHAO Y,MENG K,LIU G.A multi-channel graph attention network for Chinese NER[C]//Proceedings of the International Conference on Neural Information Processing,2021:203-214. [36] WANG Y,LU L,WU Y,et al.Polymorphic graph attention network for Chinese NER[J].Expert Systems with Applications,2022:117467. [37] ZHANG W,LUO J,YANG K.Social media named entity recognition based on graph attention network[C]//Proceedings of the International Symposium on Computer Science and Intelligent Controls(ISCSIC),2021:127-131. [38] CETOLI A,BRAGAGLIA S,O’HARNEY A D,et al.Graph convolutional networks for named entity recognition[J].arXiv:1709.10053,2017. [39] CAO Y,HOU L,LI J,et al.Neural collective entity linking[J].arXiv:1811.08603,2018. [40] JIA N,CHENG X,SU S,et al.CoGCN:combining co‐attention with graph convolutional network for entity linking with knowledge graphs[J].Expert Systems,2021,38(1):e12606. [41] PUJARY D,THORNE C,AZIZ W.Disease normalization with graph embeddings[C]//Proceedings of SAI Intelligent Systems Conference,2020:209-217. [42] WU J,ZHANG R,MAO Y,et al.Dynamic graph convolutional networks for entity linking[C]//Proceedings of the Web Conference 2020,2020:1149-1159. [43] CHEN Z,WU Y,FENG Y,et al.Integrating manifold knowledge for global entity linking with heterogeneous graphs[J].Data Intelligence,2022,4(1):20-40. [44] ZHANG Y.Collective entity linking models via graph neural network[EB/OL].(2019)[2022-11-02].https://www.semanticscholar.org/paper/Collective-Entity-Linking-Models-via-Graph-Neural-Zhang/6ba946266b97e964fd664e1484fc-f1ae330173b8. [45] KACUPAJ E,PLEPI J,SINGH K,et al.Conversational question answering over knowledge graphs with transformer and graph attention networks[J].arXiv:2104. 01569,2021. [46] BO M,ZHANG M.Learning dynamic coherence with graph attention network for biomedical entity linking[C]//Proceedings of the International Joint Conference on Neural Networks(IJCNN),2021:1-8. [47] MA J,LI D,CHEN Y,et al.A knowledge graph entity disambiguation method based on entity-relationship embedding and graph structure embedding[J].Computational Intelligence and Neuroscience,2021:2878189. [48] SHAW P,MASSEY P,CHEN A,et al.Generating logical forms from graph representations of text and entities[J].arXiv:1905.08407,2019. [49] GUI T,ZOU Y,ZHANG Q,et al.A lexicon-based graph neural network for Chinese NER[C]//Proceedings of the 2019 Conference on Empirical Methods in Natural Language Processing and the 9th International Joint Conference on Natural Language Processing(EMNLP-IJCNLP),2019:1040-1050. [50] RATINOV L,ROTH D.Design challenges and misconceptions in named entity recognition[C]//Proceedings of the 13th Conference on Computational Natural Language Learning(CoNLL-2009),2009:147-155. [51] DING R,XIE P,ZHANG X,et al.A neural multi-digraph model for Chinese NER with gazetteers[C]//Proceedings of the 57th Annual Meeting of the Association for Computational Linguistics,2019:1462-1467. [52] VRETINARIS A,LEI C,EFTHYMIOU V,et al.Medical entity disambiguation using graph neural networks[C]//Proceedings of the 2021 International Conference on Management of Data,2021:2310-2318. [53] ZHANG Z,WU C,LI Z,et al.Author Name disambiguation using multiple graph attention networks[C]//Proceedings of the International Joint Conference on Neural Networks(IJCNN),2021:1-8. [54] CHEN P,DING H,ARAKI J,et al.Explicitly capturing relations between entity mentions via graph neural networks for domain-specific named entity recognition[C]//Proceedings of the 59th Annual Meeting of the Association for Computational Linguistics and the 11th International Joint Conference on Natural Language Processing(Volume 2:Short Papers),2021. [55] LOU Y,QIAN T,LI F,et al.A graph attention model for dictionary-guided named entity recognition[J].IEEE Access,2020,8:71584-71592. [56] SETI X,WUMAIER A,YIBULAYIN T,et al.Named-entity recognition in sports field based on a character-level graph convolutional network[J].Information,2020,11(1):30. [57] HAISA G,ALTENBEK G.Deep Learning with word embedding improves Kazakh named-entity recognition[J].Information,2022,13(4):180. [58] HONG Y,LIU Y,YANG S,et al.Improving graph convolutional networks based on relation-aware attention for end-to-end relation extraction[J].IEEE Access,2020,8:51315-51323. [59] LAI Q,ZHOU Z,LIU S.Joint entity-relation extraction via improved graph attention networks[J].Symmetry,2020,12(10):1746. [60] FU T J,LI P H,MA W Y.GraphRel:modeling text as relational graphs for joint entity and relation extraction[C]//Proceedings of the 57th Annual Meeting of Association for Computational Linguistics,2019:1409-1418. [61] CARBONELL M,RIBA P,VILLEGAS M,et al.Named entity recognition and relation extraction with graph neural networks in semi structured documents[C]//Proceedings of the 25th International Conference on Pattern Recognition(ICPR),2021:9622-9627. [62] PANG Y,ZHOU T,ZHANG Z.A joint model for Chinese medical entity and relation extraction based on graph convolutional networks[C]//Proceedings of the 3rd International Conference on Natural Language Processing(ICNLP),2021:119-124. [63] KAMBAR M E Z N.Chemical-gene relation extraction with graph neural networks and bert encoder[C]//Proceedings of the International Conference on Innovations in Computing Research,2022:166. [64] LI T,MA L,QIN J,et al.DTGCN:a method combining dependency tree and graph convolutional networks for Chinese long-interval named entity relationship extraction[J].Journal of Ambient Intelligence and Humanized Computing,2022,258:1-13. [65] LUO Y,ZHAO H.Bipartite flat-graph network for nested named entity recognition[J].arXiv:2005.00436,2020. [66] ZHOU L,LI J,GU Z,et al.PANNER:POS-aware nested named entity recognition through heterogeneous graph neural network[J].IEEE Transactions on Computational Social Systems,2022(1). [67] SUI Y,BU F,HU Y,et al.Trigger-GNN:a trigger-based graph neural network for nested named entity recognition[C]//Proceedings of the International Joint Conference on Neural Networks(IJCNN),2022:1-8. [68] TRAN T T,MIWA M,ANANIADOU S.Syntactically-informed word representations from graph neural network[J].Neurocomputing,2020,413:431-443. [69] JIN H,HOU L,LI J,et al.Fine-grained entity typing via hierarchical multi graph convolutional networks[C]//Proceedings of the 2019 Conference on Empirical Methods in Natural Language Processing and the 9th International Joint Conference on Natural Language Processing(EMNLP-IJCNLP),2019:4969-4978. [70] XU L,JIE Z,LU W,et al.Better feature integration for named entity recognition[J].arXiv:2104.05316,2021. [71] SUN X,ZHOU J,WANG S,et al.Linguistic dependency guided graph convolutional networks for named entity recognition[C]//Proceedings of the International Conference on Advanced Data Mining and Applications,2022:237-248. [72] ZARATIANA U,TOMEH N,HOLAT P,et al.GNNER:reducing overlapping in Span-based NER using graph neural networks[C]//Proceedings of the 60th Annual Meeting of the Association for Computational Linguistics:Student Research Workshop,2022:97-103. |
[1] | ZHANG Ting, ZHANG Xingzhong, WANG Huimin, YANG Gang, WANG Dawei. 3D Object Detection in Substation Scene Based on Graph Neural Network [J]. Computer Engineering and Applications, 2023, 59(9): 329-336. |
[2] | CHEN Jishang, Abudukelimu Halidanmu, LIANG Yunze, Abulizi Abudukelimu, Aishan Mikelayi, GUO Wenqiang. Review of Application of Deep Learning in Symbolic Music Generation [J]. Computer Engineering and Applications, 2023, 59(9): 27-45. |
[3] | JIANG Qiuxiang, GUO Weipeng, WANG Zilong, OUYANG Xingtao, LONG Ruirui. Application and Prospect of Python Language in Field of Hydrology and Water Resources [J]. Computer Engineering and Applications, 2023, 59(9): 46-58. |
[4] | SUN Aijing, WANG Guoqing. Neighbor Relation-Aware Graph Convolutional Network for Recommendation [J]. Computer Engineering and Applications, 2023, 59(9): 112-122. |
[5] | LUO Huilan, CHEN Han. Spatial-Temporal Convolutional Attention Network for Action Recognition [J]. Computer Engineering and Applications, 2023, 59(9): 150-158. |
[6] | LI Wenju, CHU Wanghui, CUI Liu, SU Pan, ZHANG Gan. 3D Object Detection Method Combining on Graph Sampling and Graph Attention [J]. Computer Engineering and Applications, 2023, 59(9): 237-244. |
[7] | DAI Chao, LIU Ping, SHI Juncai, REN Hongjie. Regularized Extraction of Remotely Sensed Image Buildings Using U-Shaped Networks [J]. Computer Engineering and Applications, 2023, 59(8): 105-116. |
[8] | ZHAO Ping, DOU Quansheng, TANG Huanling, JIANG Ping, CHEN Shuzhen. Attention Adaptive Model with Word Information Embeding for Named Entity Recognition [J]. Computer Engineering and Applications, 2023, 59(8): 167-174. |
[9] | LIU Hualing, PI Changpeng, ZHAO Chenyu, QIAO Liang. Review of Cross-Domain Object Detection Algorithms Based on Depth Domain Adaptation [J]. Computer Engineering and Applications, 2023, 59(8): 1-12. |
[10] | HE Jiafeng, CHEN Hongwei, LUO Dehan. Review of Real-Time Semantic Segmentation Algorithms for Deep Learning [J]. Computer Engineering and Applications, 2023, 59(8): 13-27. |
[11] | ZHANG Yanqing, MA Jianhong, HAN Ying, CAO Yangjie, LI Jie, YANG Cong. Review of Research on Real-World Single Image Super-Resolution Reconstruction [J]. Computer Engineering and Applications, 2023, 59(8): 28-40. |
[12] | WEI Jian, ZHAO Xu, LI Lianpeng. Siamese Network Weak Target Tracking Algorithm Fused with Location Information Attention [J]. Computer Engineering and Applications, 2023, 59(7): 198-206. |
[13] | ZHAO Hongwei, ZHENG Jiajun, ZHAO Xinxin, WANG Shengchun, LI Yidong. Rail Surface Defect Method Based on Bimodal-Modal Deep Learning [J]. Computer Engineering and Applications, 2023, 59(7): 285-293. |
[14] | WANG Jing, JIN Yuchu, GUO Ping, HU Shaoyi. Survey of Camera Pose Estimation Methods Based on Deep Learning [J]. Computer Engineering and Applications, 2023, 59(7): 1-14. |
[15] | JIANG Yuying, CHEN Xinyu, LI Guangming, WANG Fei, GE Hongyi. Graph Neural Network and Its Research Progress in Field of Image Processing [J]. Computer Engineering and Applications, 2023, 59(7): 15-30. |
Viewed | ||||||
Full text |
|
|||||
Abstract |
|
|||||