Wang, M., Wang, H.F., Li, B.H., Zhao, X., Wang, X.: A review of key technologies of new generation knowledge graph. Comput. Res. Dev. 1–18 (2022)
Google Scholar
Zhang, J.X., Zhang, X.S., Wu, C.X., Zhao, Z.S.: A review of knowledge graph construction technology. Comput. Eng. 48(03), 23–37 (2022)
Google Scholar
Tian, L., Zhang, J.C., Zhang, J.H., Zhou, W.T., Zhou, X.: Overview of knowledge graph: representation, construction, reasoning and knowledge Hypergraph theory. Comput. Appl. 41(08), 2161–2186 (2021)
Google Scholar
Lv, J., Zhang, Y.H., Zhuang, Y.L.: Research on the optimization of emergency logistics capacity based on smart logistics under public health crisis. China Soft Sci. 16–22 (2020) (S1)
Google Scholar
Yang, X.H., Deng, S., Liu, C.N.: Knowledge representation in the field of natural disaster emergency logistics based on ontology. Libr. Sci. Res. 60–66 (2012)
Google Scholar
Zhang, X.D.: Research on the construction of ontology relational database in logistics field. M.S. thesis, Henan Normal University, Henan (2012)
Google Scholar
Zhang, L., Wang, Q.Z., Ning, Y.H., Jiang, D.L.: Knowledge representation and application of emergency logistics ontology driven by business model. J. Southwest Jiaotong Univ. 50(03), 550–556 (2015)
Google Scholar
Zhang, L., Jiang, D.L., Ju, Y.R., Wang, Q.Z., Li, P.P.: Managing emergency material distribution knowledge using ontology-based modeling for emergency distribution decision. Adv. Mater. Res. 605–607 (2012)
Google Scholar
Herold, M., Minor, M.: Ontology-based transfer learning in the airport and warehouse logistics domains. In: Proceedings of the {AAAI} 2021 Spring Symposium on Combining Machine Learning and Knowledge Engineering {(AAAI-MAKE} 2021), Stanford University, Palo Alto, California, USA, March 22–24 (2021)
Google Scholar
Glöckner, M., Ludwig, A.: Ontological structuring of logistics services. In: Proceedings of the International Conference on Web Intelligence, Leipzig, Germany, August 23–26 (2017)
Google Scholar
Cao, X.L., Li, Y.: The enlightenment of new coronary pneumonia prevention and control to the development of emergency logistics in my country. China Emerg. Rescue 14–17 (2020)
Google Scholar
Pu, T.J., Tan, Y.P., Peng, G.Z., Xu, H.F., Zhang, Z.H.: Construction and application of knowledge graph in electric power field. Power Grid Technol. 45(06), 2080–2091 (2021)
Google Scholar
Jia, L.R., Liu, J., Yu, T., Dong, Y., Zhu, L., Gao, B., et al.: Construction of knowledge graph of traditional Chinese medicine. J. Med. Inform. 36(08), 51–53+59 (2015)
Google Scholar
Li, L., Wang, P., Yan, J., et al.: Real-world data medical knowledge graph: construction and applications. Artif. Intell. Med. 103(19), 101817 (2020)
Article
Google Scholar
Du, Z.Q., Li, Y., Zhang, Y.T., Tan, Y.Q., Zhao, W.H.: Research on the construction method of natural disaster emergency knowledge graph. J. Wuhan Univ. (Inf. Sci. Ed.) 45(09), 1344–1355 (2020)
Google Scholar
Lv, H.K., Hong, L., Ma, F.C.: Construction and application of financial equity knowledge graph. Data Anal. Knowl. Discov. 4(05), 27–37 (2020)
Google Scholar
Chen, X.J., Xiang, Y.: Construction and application of enterprise risk knowledge graph. Comput. Sci. 47(11), 237–243 (2020)
Google Scholar
Sun, Y.S., Yang, Y., Wang, Y.J.:“Automatic construction of open domain knowledge graph. Comput. Eng. 1–9 (2022)
Google Scholar
Gao, J.Y., Yang, T., Dong, H.Y., Shi, H.Y., Hu, K.F.: Research on named entity extraction of symptoms of TCM medical records based on LSTM-CRF. China J. Tradit. Chin. Med. 28(05), 20–24 (2021)
Google Scholar
Ma, X.Z., Hovy, E.H.: End-to-end sequence labeling via bi-directional LSTM-CNNs-CRF. CoRR, abs/1603.01354 (2016)
Google Scholar
Zhao, P.W., Li, Z.Y., Lin, X.Q.: Chinese character relation extraction and recognition based on attention mechanism and convolutional neural network. Data Anal. Knowl. Discov. 1–16 (2022)
Google Scholar
dos Santos, C.N., Bing, X., Zhou, B.W.: Classifying relations by ranking with convolutional neural networks. CoRR, abs/1504.06580 (2015)
Google Scholar
Dowang, L., Cao, Z., Melo, D.G., et al.: Relation classification via multi-level attention CNNs. In: Proceedings of 54th Annual Meeting of the Association for Computational Linguistics. ACL, Berlin, Germany (2016)
Google Scholar
Zhou, Y.: Text classification method based on GloVe model and attention mechanism Bi-LSTM. Electron. Meas. Technol. 45(07), 42–47 (2022)
Google Scholar
Miwa, M., Bansal, M.: End-to-end relation extraction using LSTMs on sequences and tree structures. In: Proceedings of the 54th Annual Meeting of the Association for Computational Linguistics. ACL, Berlin, Germany (2016)
Google Scholar
Han, X., Sun, L.: A generative entity-mention model for linking entities with knowledge base. In: Proceedings of the 49th Annual Meeting of the Association for Computational Linguistics: Human Language Technologies. ACL, Oregon, Porland (2011)
Google Scholar
Han, X.P., Sun, L.: An entity-topic model for entity linking. In: Proceedings of the 2012 Joint Conference on Empirical Methods in Natural Language Processing an Computational Natural Language Learning (EMNLP-CoNLL’12). ACL, Jeju Island, Korea (2012)
Google Scholar
Cimiano, P.: Information extraction for knowledge graph construction. In: Proceedings of the 14th International Reasoning Web Summer School-RW 2018. Reasoning Web Summer School, Luxembourg (2018)
Google Scholar
Hou, M.W., Wei, R., Lu, L., Lan, X., Cai, H.W.: A review of knowledge graph research and its application in the medical field. Comput. Res. Dev. 55(12), 2587–2599 (2018)
Google Scholar
Vigo, M., Matentzoglu, N., Jay, C., et al.: Comparing ontology authoring workflows with Protege: in the laboratory, in the tutorial and in the wild. J. Web Semant. 100473.1–100473.11 (2019)
Google Scholar