GTRL: An Entity Group-Aware Temporal Knowledge Graph Representation Learning Method

被引:2
作者
Tang, Xing [1 ,2 ]
Chen, Ling [1 ,2 ]
机构
[1] Zhejiang Univ, State Key Lab Blockchain & Data Secur, Hangzhou 310027, Peoples R China
[2] Zhejiang Univ, Coll Comp Sci & Technol, Hangzhou 310027, Peoples R China
关键词
Representation learning; Correlation; Task analysis; Knowledge graphs; Convolution; Stacking; Tail; Temporal knowledge graph; representation learning; entity group modeling; graph convolution network;
D O I
10.1109/TKDE.2023.3334165
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Temporal Knowledge Graph (TKG) representation learning embeds entities and event types into a continuous low-dimensional vector space by integrating the temporal information, which is essential for downstream tasks, e.g., event prediction and question answering. Existing methods stack multiple graph convolution layers to model the influence of distant entities, leading to the over-smoothing problem. To alleviate the problem, recent studies infuse reinforcement learning to obtain paths that contribute to modeling the influence of distant entities. However, due to the limited number of hops, these studies fail to capture the correlation between entities that are far apart and even unreachable. To this end, we propose GTRL, an entity Group-aware Temporal knowledge graph Representation Learning method. GTRL is the first work that incorporates the entity group modeling to capture the correlation between entities by stacking only a finite number of layers. Specifically, the entity group mapper is proposed to generate entity groups from entities in a learning way. Based on entity groups, the implicit correlation encoder is introduced to capture implicit correlations between any pairwise entity groups. In addition, the hierarchical GCNs are exploited to accomplish the message aggregation and representation updating on the entity group graph and the entity graph. Finally, GRUs are employed to capture the temporal dependency in TKGs. Extensive experiments on six real-world datasets demonstrate that GTRL achieves the state-of-the-art performances on the event prediction task, outperforming the best baseline by an average of 7.35%, 6.09%, 8.31%, and 11.21% in MRR, Hits@1, Hits@3, and Hits@10, respectively.
引用
收藏
页码:4707 / 4721
页数:15
相关论文
共 40 条
[1]  
Bordes A., 2013, P 26 INT C NEURAL IN, P2787
[2]  
Boschee J., 2015, Harvard Dataverse, V3
[3]   Recurrent Neural Networks for Multivariate Time Series with Missing Values [J].
Che, Zhengping ;
Purushotham, Sanjay ;
Cho, Kyunghyun ;
Sontag, David ;
Liu, Yan .
SCIENTIFIC REPORTS, 2018, 8
[4]   DexDeepFM: Ensemble Diversity Enhanced Extreme Deep Factorization Machine Model [J].
Chen, Ling ;
Shi, Hongyu .
ACM TRANSACTIONS ON KNOWLEDGE DISCOVERY FROM DATA, 2022, 16 (05)
[5]   RLPath: a knowledge graph link prediction method using reinforcement learning based attentive relation path searching and representation learning [J].
Chen, Ling ;
Cui, Jun ;
Tang, Xing ;
Qian, Yuntao ;
Li, Yansheng ;
Zhang, Yongjun .
APPLIED INTELLIGENCE, 2022, 52 (04) :4715-4726
[6]   Multi-information embedding based entity alignment [J].
Chen, Ling ;
Tian, Xiaoxue ;
Tang, Xing ;
Cui, Jun .
APPLIED INTELLIGENCE, 2021, 51 (12) :8896-8912
[7]  
Dasgupta SS, 2018, 2018 CONFERENCE ON EMPIRICAL METHODS IN NATURAL LANGUAGE PROCESSING (EMNLP 2018), P2001
[8]   Dynamic Knowledge Graph based Multi-Event Forecasting [J].
Deng, Songgaojun ;
Rangwala, Huzefa ;
Ning, Yue .
KDD '20: PROCEEDINGS OF THE 26TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2020, :1585-1595
[9]   Multiagent Reinforcement Learning With Heterogeneous Graph Attention Network [J].
Du, Wei ;
Ding, Shifei ;
Zhang, Chenglong ;
Shi, Zhongzhi .
IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2023, 34 (10) :6851-6860
[10]  
Gao JF, 2022, PR MACH LEARN RES