Computer Engineering and Applications ›› 2023, Vol. 59 ›› Issue (18): 59-73.DOI: 10.3778/j.issn.1002-8331.2212-0119
• Research Hotspots and Reviews • Previous Articles Next Articles
YU Mengbo, DU Jianqiang, LUO Jigen, NIE Bin, LIU Yong, QIU Junyang
Online:
2023-09-15
Published:
2023-09-15
于梦波,杜建强,罗计根,聂斌,刘勇,邱俊洋
YU Mengbo, DU Jianqiang, LUO Jigen, NIE Bin, LIU Yong, QIU Junyang. Research Progress of Knowledge Graph Completion Based on Knowledge Representation Learning[J]. Computer Engineering and Applications, 2023, 59(18): 59-73.
于梦波, 杜建强, 罗计根, 聂斌, 刘勇, 邱俊洋. 基于知识表示学习的知识图谱补全研究进展[J]. 计算机工程与应用, 2023, 59(18): 59-73.
Add to citation manager EndNote|Ris|BibTeX
URL: http://cea.ceaj.org/EN/10.3778/j.issn.1002-8331.2212-0119
[1] CHEN D,ZHAO H.Research on the method of extracting domain knowledge from the freebase RDF dumps[J].IEEE Access,2018,6:50306-50322. [2] BOI?SKI T,SZYMA?SKI J,DUDEK B,et al.NLP questions answering using DBpedia and YAGO[J].Vietnam Journal of Computer Science,2020,7(4). [3] FREIRE N,ROBSON G,HOWARD J B,et al.Cultural heritage metadata aggregation using web technologies:IIIF,Sitemaps and Schema.org[J].International Journal on Digital Libraries,2020,21(1):19-30. [4] 张明星,张骁雄,刘姗姗,等.利用知识图谱的推荐系统研究综述[J].计算机工程与应用,2023,59(4):30-42. ZHANG M X,ZHANG X X,LIU S S,et al.Review of recommendation systems using knowledge graph[J].Computer Engineering and Applications,2023,59(4):30-42. [5] 王智悦,于清,王楠,等.基于知识图谱的智能问答研究综述[J].计算机工程与应用,2020,56(23):1-11. WANG Z Y,YU Q,WANG N,et al.Survey of intelligent question answering research based on knowledge graph[J].Computer Engineering and Applications,2020,56(23):1-11. [6] NGUYEN D Q,NGUYEN T N,PHUNG D.A relational memory-based embedding model for triple classification and search personalization[C]//Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics(ACL),2020:3429-3435. [7] 李端阳.基于表示学习的知识图谱补全技术研究[D].郑州:郑州轻工业大学,2022. LI D Y.Research on knowledge graph completion technology based on representation learning[D].Zhengzhou:Zhengzhou University of Light Industry,2022. [8] HILMAN D,?ERBAN O.A unified link prediction architecture applied on a novel heterogenous knowledge base[J].Knowledge-Based Systems,2022,241:108228. [9] BORDES A,USUNIER N,GARCIA-DURAN A,et al.Translating embeddings for modeling multi-relational data[C]//Advances in Neural Information Processing Systems,2013. [10] WANG Z,ZHANG J,FENG J,et al.Knowledge graph embedding by translating on hyperplanes[C]//Proceedings of the AAAI Conference on Artificial Intelligence,2014. [11] LIN Y,LIU Z,SUN M,et al.Learning entity and relation embeddings for knowledge graph completion[C]//Proceedings of the AAAI Conference on Artificial Intelligence,2015. [12] JI G,HE S,XU L,et al.Knowledge graph embedding via dynamic mapping matrix[C]//Proceedings of the 53rd Annual Meeting of the Association for Computational Linguistics and the 7th International Joint Conference on Natural Language Processing(volume 1:long papers),2015:687-696. [13] FAN M,ZHOU Q,CHANG E,et al.Transition-based knowledge graph embedding with relational mapping properties[C]//Proceedings of the 28th Pacific Asia Conference on Language,Information and Computing,2014:328-337. [14] XIAO H,HUANG M,ZHU X.From one point to a manifold:knowledge graph embedding for precise link prediction[J].arXiv:1512.04792,2015. [15] 陈晓军,向阳.STransH:一种改进的基于翻译模型的知识表示模型[J].计算机科学,2019,46(9):184-189. CHEN X J,XIANG Y.STransH:a revised knowledge translation-based model for knowledge representaion[J].Journal of Computer Science,2019,46(9):184-189. [16] ZHU Q,ZHOU X,ZHANG P,et al.A neural translating general hyperplane for knowledge graph embedding[J].Journal of Computational Science,2019,30:108-117. [17] SUN Z,DENG Z H,NIE J Y,et al.Rotate:knowledge graph embedding by relational rotation in complex space[J].arXiv:1902.10197,2019. [18] XIAO H,HUANG M,HAO Y,et al.TransG:a generative mixture model for knowledge graph embedding[J].arXiv:1509.05488,2015. [19] FENG J,HUANG M,WANG M,et al.Knowledge graph embedding by flexible translation[C]//Proceedings of the Fifteenth International Conference on Principles of Knowledge Representation and Reasoning,2016:557-560. [20] XIAO H,HUANG M,HAO Y,et al.TransA:an adaptive approach for knowledge graph embedding[J].arXiv:1509. 05490,2015. [21] JI G,LIU K,HE S,et al.Knowledge graph completion with adaptive sparse transfer matrix[C]//Proceedings of the AAAI Conference on Artificial Intelligence,2016. [22] QIAN W,FU C,ZHU Y,et al.Translating embeddings for knowledge graph completion with relation attention mechanism[C]//27th International Joint Conference on Artificial Intelligence,2018:4286-4292. [23] YANG S,TIAN J,ZHANG H,et al.TransMS:knowledge graph embedding for complex relations by multidirectional semantics[C]//28th International Joint Conference on Artificial Intelligence,2019:1935-1942. [24] REN F,LI J,ZHANG H,et al.TransP:a new knowledge graph embedding model by translating on positions[C]//2020 IEEE International Conference on Knowledge Graph(ICKG),2020:344-351. [25] ZHANG S,TAY Y,YAO L,et al.Quaternion knowledge graph embeddings[C]//Advances in Neural Information Processing Systems,2019. [26] CHEN H,WANG W,LI G,et al.A quaternion-embedded capsule network model for knowledge graph completion[J].IEEE Access,2020,8:100890-100904. [27] BALAZEVIC I,ALLEN C,HOSPEDALES T.Multi-relational poincaré graph embeddings[C]//Advances in Neural Information Processing Systems,2019. [28] ZHANG Z,CAI J,ZHANG Y,et al.Learning hierarchy-aware knowledge graph embeddings for link prediction[C]//Proceedings of the AAAI Conference on Artificial Intelligence,2020:3065-3072. [29] XU C,LI R.Relation embedding with dihedral group in knowledge graph[J].arXiv:1906.00687,2019. [30] HUANG X,TANG J,TAN Z,et al.Knowledge graph embedding by relational and entity rotation[J].Knowledge-Based Systems,2021,229:107310. [31] 陈恒,祁瑞华,朱毅,等.球坐标建模语义分层的知识图谱补全方法[J].计算机工程与应用,2021,57(15):101-108. CHEN H,QI R H,ZHU Y,et al.Knowledge graph completion method for semantic hierarchies of spherical coordinate modeling[J].Computer Engineering and Applications,2021,57(15):101-108. [32] RIEDEL S,YAO L,MCCALLUM A,et al.Relation extraction with matrix factorization and universal schemas[C]//Proceedings of the 2013 Conference of the North American Chapter of the Association for Computational Linguistics:Human Language Technologies,2013:74-84. [33] KAZEMI S M,POOLE D.Simple embedding for link prediction in knowledge graphs[C]//Advances in Neural Information Processing Systems,2018. [34] HALIASSOS A,KONSTANTINIDIS K,MANDIC D P.Supervised learning for nonsequential data:a canonical polyadic decomposition approach[J].IEEE Transactions on Neural Networks and Learning Systems,2021,33(10):5162-5176. [35] YANG B,YIH W,HE X,et al.Embedding entities and relations for learning and inference in knowledge bases[J].arXiv:1412.6575,2014. [36] TROUILLON T,WELBL J,RIEDEL S,et al.Complex embeddings for simple link prediction[C]//International Conference on Machine Learning,2016:2071-2080. [37] BALA?EVI? I,ALLEN C,HOSPEDALES T M.Tucker:tensor factorization for knowledge graph completion[J].arXiv:1901.09590,2019. [38] KOLDA T G,BADER B W.Tensor decompositions and applications[J].SIAM Review,2009,51(3):455-500. [39] NICKEL M,ROSASCO L,POGGIO T.Holographic embeddings of knowledge graphs[C]//Proceedings of the AAAI Conference on Artificial Intelligence,2016. [40] GARCíA-DURáN A,BORDES A,USUNIER N.Effective blending of two and three-way interactions for modeling multi-relational data[C]//European Conference on Machine Learning and Knowledge Discovery in Databases(ECML PKDD 2014),Nancy,France,September 15-19,2014:434-449. [41] BORDES A,GLOROT X,WESTON J,et al.A semantic matching energy function for learning with multi-relational data:application to word-sense disambiguation[J].Machine Learning,2014,94:233-259. [42] LIU H,WU Y,YANG Y.Analogical inference for multi-relational embeddings[C]//International Conference on Machine Learning,2017:2168-2178. [43] LIU Q,JIANG H,EVDOKIMOV A,et al.Probabilistic reasoning via deep learning:Neural association models[J].arXiv:1603.07704,2016. [44] DETTMERS T,MINERVINI P,STENETORP P,et al.Convolutional 2d knowledge graph embeddings[C]//Proceedings of the AAAI Conference on Artificial Intelligence,2018. [45] BALA?EVI? I,ALLEN C,HOSPEDALES T M.Hypernetwork knowledge graph embeddings[C]//Artificial Neural Networks and Machine Learning-ICANN 2019:Workshop and Special Sessions:28th International Conference on Artificial Neural Networks,Munich,Germany,September 17-19,2019:553-565. [46] VU T,NGUYEN T D,NGUYEN D Q,et al.A capsule network-based embedding model for knowledge graph completion and search personalization[C]//Proceedings of the 2019 Conference of the North American Chapter of the Association for Computational Linguistics:Human Language Technologies(Volume 1:Long and Short Papers),2019:2180-2189. [47] JIANG X,WANG Q,WANG B.Adaptive convolution for multi-relational learning[C]//Proceedings of the 2019 Conference of the North American Chapter of the Association for Computational Linguistics:Human Language Technologies(Volume 1:Long and Short Papers),2019:978-987. [48] VASHISHTH S,SANYAL S,NITIN V,et al.Interacte:improving convolution-based knowledge graph embeddings by increasing feature interactions[C]//Proceedings of the AAAI Conference on Artificial Intelligence,2020:3009-3016. [49] XIE Z,ZHOU G,LIU J,et al.ReInceptionE:relation-aware inception network with joint local-global structural information for knowledge graph embedding[C]//Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics,2020:5929-5939. [50] DASGUPTA S S,RAY S N,TALUKDAR P.Hyte:Hyperplane-based temporally aware knowledge graph embedding[C]//Proceedings of the 2018 Conference on Empirical Methods in Natural Language Processing,2018:2001-2011. [51] GARCíA-DURáN A,DUMAN?I? S,NIEPERT M.Learning sequence encoders for temporal knowledge graph completion[J].arXiv:1809.03202,2018. [52] GOEL R,KAZEMI S M,BRUBAKER M,et al.Diachronic embedding for temporal knowledge graph completion[C]//Proceedings of the AAAI Conference on Artificial Intelligence,2020:3988-3995. [53] XU Y,SUN S,ZHANG H,et al.Time-aware graph embedding:a temporal smoothness and task-oriented approach[J].ACM Transactions on Knowledge Discovery from Data(TKDD),2021,16(3):1-23. [54] SADEGHIAN A,ARMANDPOUR M,COLAS A,et al.ChronoR:rotation based temporal knowledge graph embedding[C]//Proceedings of the AAAI Conference on Artificial Intelligence,2021:6471-6479. [55] LIN L,SHE K.Tensor decomposition-based temporal knowledge graph embedding[C]//2020 IEEE 32nd International Conference on Tools with Artificial Intelligence(ICTAI),2020. [56] XU C,CHEN Y Y,NAYYERI M,et al.Temporal knowledge graph completion using a linear temporal regularizer and multivector embeddings[C]//Proceedings of the 2021 Conference of the North American Chapter of the Association for Computational Linguistics:Human Language Technologies,2021:2569-2578. [57] SHAO P,ZHANG D,YANG G,et al.Tucker decomposition-based temporal knowledge graph completion[J].Knowledge-Based Systems,2022,238:107841. [58] MA Y,TRESP V,DAXBERGER E A.Embedding models for episodic knowledge graphs[J].Journal of Web Semantics,2019,59:100490. [59] TRIVEDI R,DAI H,WANG Y,et al.Know-evolve:deep temporal reasoning for dynamic knowledge graphs[C]//International Conference on Machine Learning,2017:3462-3471. [60] JIN W,QU M,JIN X,et al.Recurrent event network:autoregressive structure inference over temporal knowledge graphs[J].arXiv:1904.05530,2019. [61] ZHU C,CHEN M,FAN C,et al.Learning from history:modeling temporal knowledge graphs with sequential copy-generation networks[C]//Proceedings of the AAAI Conference on Artificial Intelligence,2021:4732-4740. [62] LI Z,JIN X,LI W,et al.Temporal knowledge graph reasoning based on evolutional representation learning[C]//Proceedings of the 44th International ACM SIGIR Conference on Research and Development in Information Retrieval,2021:408-417. [63] SUN R,CAO X,ZHAO Y,et al.Multi-modal knowledge graphs for recommender systems[C]//Proceedings of the 29th ACM International Conference on Information & Knowledge Management,2020:1405-1414. [64] XIE R,LIU Z,LUAN H,et al.Image-embodied knowledge representation learning[J].arXiv:1609.07028,2016. [65] XIE R,LIU Z,JIA J,et al.Representation learning of knowledge graphs with entity descriptions[C]//Proceedings of the AAAI Conference on Artificial Intelligence,2016. [66] MOUSSELLY-SERGIEH H,BOTSCHEN T,GUREVYCH I,et al.A multimodal translation-based approach for knowledge graph representation learning[C]//Proceedings of the Seventh Joint Conference on Lexical and Computational Semantics,2018:225-234. [67] PEZESHKPOUR P,CHEN L,SINGH S.Embedding multimodal relational data for knowledge base completion[C]//Proceedings of the 2018 Conference on Empirical Methods in Natural Language Processing,2018:3208-3218. [68] WANG Z,LI L,LI Q,et al.Multimodal data enhanced representation learning for knowledge graphs[C]//2019 International Joint Conference on Neural Networks(IJCNN),2019:1-8. [69] WANG M,WANG S,YANG H,et al.Is visual context really helpful for knowledge graph? A representation learning perspective[C]//Proceedings of the 29th ACM International Conference on Multimedia,2021:2735-2743. [70] ZHAO Y,CAI X,WU Y,et al.MoSE:modality split and ensemble for multimodal knowledge graph completion[J].arXiv:2210.08821,2022. [71] CHEN X,ZHANG N,LI L,et al.Hybrid transformer with multi-level fusion for multimodal knowledge graph completion[C]//Proceedings of the 45th International ACM SIGIR Conference on Research and Development in Information Retrieval,2022:904-915. [72] LEBLAY J,CHEKOL M W.Deriving validity time in knowledge graph[C]//Companion Proceedings of the the Web Conference 2018,2018:1771-1776. [73] LEETARU K,SCHRODT P A.Gdelt:global data on events,location,and tone,1979-2012[C]//ISA Annual Convention,2013:1-49. [74] J?GER K.The limits of studying networks via event data:evidence from the ICEWS dataset[J].Journal of Global Security Studies,2018,3(4):498-511. [75] LIN Q,MAO R,LIU J,et al.Fusing topology contexts and logical rules in language models for knowledge graph completion[J].Information Fusion,2023,90:253-264. [76] CHEN X,CHEN M,SHI W,et al.Embedding uncertain knowledge graphs[C]//Proceedings of the AAAI Conference on Artificial Intelligence,2019:3363-3370. [77] YANG Z,DING M,ZHOU C,et al.Understanding negative sampling in graph representation learning[C]//Proceedings of the 26th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining,2020:1666-1676. [78] NIU G,ZHANG Y,LI B,et al.Rule-guided compositional representation learning on knowledge graphs[C]//Proceedings of the AAAI Conference on Artificial Intelligence,2020:2950-2958. [79] CHENG J,ZHANG F,YANG Z.Knowledge graph representation learning with multi-scale capsule-based embedding model incorporating entity descriptions[J].IEEE Access,2020,8:203028-203038. [80] ZHANG Z,CAO L,CHEN X,et al.Representation learning of knowledge graphs with entity attributes[J].IEEE Access,2020,8:7435-7441. [81] MIRTAHERI M,ROSTAMI M,REN X,et al.One-shot learning for temporal knowledge graphs[J].arXiv:2010. 12144,2020. |
[1] | QIU Ling, ZHANG Ansi, ZHANG Yu, LI Shaobo, LI Chuanjiang, YANG Lei. Application Method of Knowledge Graph Construction for UAV Fault Diagnosis [J]. Computer Engineering and Applications, 2023, 59(9): 280-288. |
[2] | QIU Yunfei, XING Haoran, LI Gang. Summary of Research on Construction of Knowledge Graph for Mine Construction [J]. Computer Engineering and Applications, 2023, 59(7): 64-79. |
[3] | ZHANG Jiayu, GUO Mei, ZHANG Yongliang, LI Mei, GENG Nan, GENG Yaojun. Research on Construction of Fine-Grained Knowledge Graph of Apple Diseases and Pests [J]. Computer Engineering and Applications, 2023, 59(5): 270-280. |
[4] | WU Guodong, WANG Xueni, LIU Yuliang. Research Advances on Graph Neural Network Recommendation of Knowledge Graph Enhancement [J]. Computer Engineering and Applications, 2023, 59(4): 18-29. |
[5] | ZHANG Mingxing, ZHANG Xiaoxiong, LIU Shanshan, TIAN Hao, YANG Qinqin. Review of Recommendation Systems Using Knowledge Graph [J]. Computer Engineering and Applications, 2023, 59(4): 30-42. |
[6] | XIAO Lizhong, ZANG Zhongxing, SONG Saisai. Research on Cascaded Labeling Framework for Relation Extraction with Self-Attention [J]. Computer Engineering and Applications, 2023, 59(3): 77-83. |
[7] | WANG Yiru, SHI Donghui. Ontology Construction of Architectural Intangible Cultural Heritage Knowledge Using CIDOC CRM [J]. Computer Engineering and Applications, 2023, 59(3): 317-326. |
[8] | JING Li, YAO Ke. Research on Text Classification Based on Knowledge Graph and Multimodal [J]. Computer Engineering and Applications, 2023, 59(2): 102-109. |
[9] | HU Hao, GAO Jing, LIU Zhenyu. Research and Construction of Genetic Knowledge Graph of Milk Yield Traits in Dairy Cows [J]. Computer Engineering and Applications, 2023, 59(2): 299-305. |
[10] | SHEN Xiyu, CAI Xiaohong, CAO Hui. Research Progress of Recommendation System Based on Medical Knowledge Graph [J]. Computer Engineering and Applications, 2023, 59(19): 40-51. |
[11] | WANG Guang, SHI Shanshan. Knowledge Graph Recommendation Algorithm Integrating Double-End Attention Network [J]. Computer Engineering and Applications, 2023, 59(19): 114-121. |
[12] | ZHANG Xiao, LIU Yuan. Knowledge Graph Attention Network Recommendation Algorithm Combined with User’s Perspective [J]. Computer Engineering and Applications, 2023, 59(17): 123-131. |
[13] | XU Zhihong, MAO Chen, WANG Liqin, DONG Yongfeng. Incorporating Relational Awareness and Temporal Attention for Temporal Knowledge Graph Completion [J]. Computer Engineering and Applications, 2023, 59(17): 266-274. |
[14] | LIU Zhongbao, WANG Yufei. Multi-Granularity Chinese Text Sentiment Analysis Driven by Knowledge and Data [J]. Computer Engineering and Applications, 2023, 59(15): 177-186. |
[15] | LIU Hongbo, CHEN Yue, LU Jicang, HOU Xuemei, YANG Kuiwu. Survey on Rule Mining for Knowledge Graph [J]. Computer Engineering and Applications, 2023, 59(14): 30-38. |
Viewed | ||||||
Full text |
|
|||||
Abstract |
|
|||||