A Multi-Expert Structural-Semantic Hybrid Framework for Unveiling Historical Patterns in Temporal Knowledge Graphs

Temporal knowledge graph reasoning aims to predict future events with knowledge of existing facts and plays a key role in various downstream tasks. Previous methods focused on either graph structure learning or semantic reasoning, failing to integrate dual reasoning perspectives to handle different prediction scenarios. Moreover, they lack the capability to capture the inherent differences between historical and non-historical events, which limits their generalization across different temporal contexts. To this end, we propose a Multi-Expert Structural-Semantic Hybrid (MESH) framework that employs three kinds of expert modules to integrate both structural and semantic information, guiding the reasoning process for different events. Extensive experiments on three datasets demonstrate the effectiveness of our approach.
View on arXiv@article{deng2025_2506.14235, title={ A Multi-Expert Structural-Semantic Hybrid Framework for Unveiling Historical Patterns in Temporal Knowledge Graphs }, author={ Yimin Deng and Yuxia Wu and Yejing Wang and Guoshuai Zhao and Li Zhu and Qidong Liu and Derong Xu and Zichuan Fu and Xian Wu and Yefeng Zheng and Xiangyu Zhao and Xueming Qian }, journal={arXiv preprint arXiv:2506.14235}, year={ 2025 } }