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Extrapolation Reasoning on Temporal Knowledge Graphs via Temporal Dependencies Learning
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作者 Ye Wang Binxing Fang +3 位作者 Shuxian Huang Kai Chen Yan Jia Aiping Li 《CAAI Transactions on Intelligence Technology》 2025年第3期815-826,共12页
Extrapolation on Temporal Knowledge Graphs(TKGs)aims to predict future knowledge from a set of historical Knowledge Graphs in chronological order.The temporally adjacent facts in TKGs naturally form event sequences,ca... Extrapolation on Temporal Knowledge Graphs(TKGs)aims to predict future knowledge from a set of historical Knowledge Graphs in chronological order.The temporally adjacent facts in TKGs naturally form event sequences,called event evolution patterns,implying informative temporal dependencies between events.Recently,many extrapolation works on TKGs have been devoted to modelling these evolutional patterns,but the task is still far from resolved because most existing works simply rely on encoding these patterns into entity representations while overlooking the significant information implied by relations of evolutional patterns.However,the authors realise that the temporal dependencies inherent in the relations of these event evolution patterns may guide the follow-up event prediction to some extent.To this end,a Temporal Relational Context-based Temporal Dependencies Learning Network(TRenD)is proposed to explore the temporal context of relations for more comprehensive learning of event evolution patterns,especially those temporal dependencies caused by interactive patterns of relations.Trend incorporates a semantic context unit to capture semantic correlations between relations,and a structural context unit to learn the interaction pattern of relations.By learning the temporal contexts of relations semantically and structurally,the authors gain insights into the underlying event evolution patterns,enabling to extract comprehensive historical information for future prediction better.Experimental results on benchmark datasets demonstrate the superiority of the model. 展开更多
关键词 EXTRAPOLATION link prediction temporal knowledge graph reasoning
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Future Event Prediction Based on Temporal Knowledge Graph Embedding 被引量:4
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作者 Zhipeng Li Shanshan Feng +6 位作者 Jun Shi Yang Zhou Yong Liao Yangzhao Yang Yangyang Li Nenghai Yu Xun Shao 《Computer Systems Science & Engineering》 SCIE EI 2023年第3期2411-2423,共13页
Accurate prediction of future events brings great benefits and reduces losses for society in many domains,such as civil unrest,pandemics,and crimes.Knowledge graph is a general language for describing and modeling com... Accurate prediction of future events brings great benefits and reduces losses for society in many domains,such as civil unrest,pandemics,and crimes.Knowledge graph is a general language for describing and modeling complex systems.Different types of events continually occur,which are often related to historical and concurrent events.In this paper,we formalize the future event prediction as a temporal knowledge graph reasoning problem.Most existing studies either conduct reasoning on static knowledge graphs or assume knowledges graphs of all timestamps are available during the training process.As a result,they cannot effectively reason over temporal knowledge graphs and predict events happening in the future.To address this problem,some recent works learn to infer future events based on historical eventbased temporal knowledge graphs.However,these methods do not comprehensively consider the latent patterns and influences behind historical events and concurrent events simultaneously.This paper proposes a new graph representation learning model,namely Recurrent Event Graph ATtention Network(RE-GAT),based on a novel historical and concurrent events attention-aware mechanism by modeling the event knowledge graph sequence recurrently.More specifically,our RE-GAT uses an attention-based historical events embedding module to encode past events,and employs an attention-based concurrent events embedding module to model the associations of events at the same timestamp.A translation-based decoder module and a learning objective are developed to optimize the embeddings of entities and relations.We evaluate our proposed method on four benchmark datasets.Extensive experimental results demonstrate the superiority of our RE-GAT model comparing to various base-lines,which proves that our method can more accurately predict what events are going to happen. 展开更多
关键词 Event prediction temporal knowledge graph graph representation learning knowledge embedding
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Extrapolation over temporal knowledge graph via hyperbolic embedding 被引量:3
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作者 Yan Jia Mengqi Lin +5 位作者 Ye Wang Jianming Li Kai Chen Joanna Siebert Geordie Z.Zhang Qing Liao 《CAAI Transactions on Intelligence Technology》 SCIE EI 2023年第2期418-429,共12页
Predicting potential facts in the future,Temporal Knowledge Graph(TKG)extrapolation remains challenging because of the deep dependence between the temporal association and semantic patterns of facts.Intuitively,facts(... Predicting potential facts in the future,Temporal Knowledge Graph(TKG)extrapolation remains challenging because of the deep dependence between the temporal association and semantic patterns of facts.Intuitively,facts(events)that happened at different timestamps have different influences on future events,which can be attributed to a hierarchy among not only facts but also relevant entities.Therefore,it is crucial to pay more attention to important entities and events when forecasting the future.However,most existing methods focus on reasoning over temporally evolving facts or mining evolutional patterns from known facts,which may be affected by the diversity and variability of the evolution,and they might fail to attach importance to facts that matter.Hyperbolic geometry was proved to be effective in capturing hierarchical patterns among data,which is considered to be a solution for modelling hierarchical relations among facts.To this end,we propose ReTIN,a novel model integrating real-time influence of historical facts for TKG reasoning based on hyperbolic geometry,which provides low-dimensional embeddings to capture latent hierarchical structures and other rich semantic patterns of the existing TKG.Considering both real-time and global features of TKG boosts the adaptation of ReTIN to the ever-changing dynamics and inherent constraints.Extensive experiments on benchmarks demonstrate the superiority of ReTIN over various baselines.The ablation study further supports the value of exploiting temporal information. 展开更多
关键词 EXTRAPOLATION hyperbolic embedding temporal knowledge graph
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RotatS:temporal knowledge graph completion based on rotation and scaling in 3D space
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作者 余泳 CHEN Shudong +3 位作者 TONG Da QI Donglin PENG Fei ZHAO Hua 《High Technology Letters》 EI CAS 2023年第4期348-357,共10页
As the research of knowledge graph(KG)is deepened and widely used,knowledge graph com-pletion(KGC)has attracted more and more attentions from researchers,especially in scenarios of in-telligent search,social networks ... As the research of knowledge graph(KG)is deepened and widely used,knowledge graph com-pletion(KGC)has attracted more and more attentions from researchers,especially in scenarios of in-telligent search,social networks and deep question and answer(Q&A).Current research mainly fo-cuses on the completion of static knowledge graphs,and the temporal information in temporal knowl-edge graphs(TKGs)is ignored.However,the temporal information is definitely very helpful for the completion.Note that existing researches on temporal knowledge graph completion are difficult to process temporal information and to integrate entities,relations and time well.In this work,a rotation and scaling(RotatS)model is proposed,which learns rotation and scaling transformations from head entity embedding to tail entity embedding in 3D spaces to capture the information of time and rela-tions in the temporal knowledge graph.The performance of the proposed RotatS model have been evaluated by comparison with several baselines under similar experimental conditions and space com-plexity on four typical knowl good graph completion datasets publicly available online.The study shows that RotatS can achieve good results in terms of prediction accuracy. 展开更多
关键词 knowledge graph(KG) temporal knowledge graph(TKG) knowledge graph com-pletion(KGC) rotation and scaling(RotatS)
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Exploring the Chameleon Effect of Contextual Dynamics in Temporal Knowledge Graph for Event Prediction 被引量:1
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作者 Xin Liu Yi He +3 位作者 Wenxin Tai Xovee Xu Fan Zhou Guangchun Luo 《Tsinghua Science and Technology》 2025年第1期433-455,共23页
The ability to forecast future events brings great benefits for society and cyberspace in many public safety domains,such as civil unrest,pandemics and crimes.The occurrences of new events are often correlated or depe... The ability to forecast future events brings great benefits for society and cyberspace in many public safety domains,such as civil unrest,pandemics and crimes.The occurrences of new events are often correlated or dependent on historical and concurrent events.Many existing studies learn event-occurring processes with sequential and structural models,which,however,suffer from inefficient and inaccurate prediction problems.To better understand the event forecasting task and characterize the occurrence of new events,we exploit the human cognitive theory from the cognitive neuroscience discipline to find available cues for algorithm design and event prediction.Motivated by the dual process theory,we propose a two-stage learning scheme for event knowledge mining and prediction.First,we screen out event candidates based on historical inherent knowledge.Then we re-rank event candidates by probing into the newest relative events.Our proposed model mimics a sociological phenomenon called“the chameleon effect”and consists of a new target attentive graph collaborative learning mechanism to ensure a better understanding of sophisticated evolution patterns associated with events.In addition,self-supervised contrastive learning is employed to alleviate the over-smoothing problem that existed in graph learning while improving the model’s interpretability.Experiments show the effectiveness of our approach. 展开更多
关键词 temporal knowledge graph event forecasting graph neural networks self-supervised learning explainability
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