Temporal Knowledge Graph
Temporal Knowledge Graphs (TKGs) extend traditional knowledge graphs by incorporating temporal information, aiming to model the dynamic evolution of real-world knowledge and predict future events based on historical data. Current research focuses on developing sophisticated reasoning models, often employing hybrid approaches that combine geometric embeddings (e.g., Euclidean, hyperbolic) with neural networks (e.g., Transformers, Graph Neural Networks) or large language models (LLMs) to capture complex semantic and hierarchical relationships across time. These advancements are improving the accuracy of tasks like link prediction and question answering, with applications ranging from career trajectory prediction to anomaly detection in dynamic systems.
Papers
Arbitrary Time Information Modeling via Polynomial Approximation for Temporal Knowledge Graph Embedding
Zhiyu Fang, Jingyan Qin, Xiaobin Zhu, Chun Yang, Xu-Cheng Yin
Transformer-based Reasoning for Learning Evolutionary Chain of Events on Temporal Knowledge Graph
Zhiyu Fang, Shuai-Long Lei, Xiaobin Zhu, Chun Yang, Shi-Xue Zhang, Xu-Cheng Yin, Jingyan Qin
Temporal Knowledge Graph Completion with Time-sensitive Relations in Hypercomplex Space
Li Cai, Xin Mao, Zhihong Wang, Shangqing Zhao, Yuhao Zhou, Changxu Wu, Man Lan
A Survey on Temporal Knowledge Graph: Representation Learning and Applications
Li Cai, Xin Mao, Yuhao Zhou, Zhaoguang Long, Changxu Wu, Man Lan
TILP: Differentiable Learning of Temporal Logical Rules on Knowledge Graphs
Siheng Xiong, Yuan Yang, Faramarz Fekri, James Clayton Kerce
SSTKG: Simple Spatio-Temporal Knowledge Graph for Intepretable and Versatile Dynamic Information Embedding
Ruiyi Yang, Flora D. Salim, Hao Xue
HIP Network: Historical Information Passing Network for Extrapolation Reasoning on Temporal Knowledge Graph
Yongquan He, Peng Zhang, Luchen Liu, Qi Liang, Wenyuan Zhang, Chuang Zhang