Abstract
Temporal Knowledge Graph (TKG) representation learning aims to project entities and relations from high-dimensional spaces into low-dimensional ones while preserving dynamic relational characteristics. However, many existing methods primarily focus on single-time-stamp Knowledge Graphs, neglecting the importance of time in capturing the evolving relationships within TKGs. To address this limitation, we introduce TAR-TKG (Temporal-Aware Representation for Temporal Knowledge Graph), a novel framework that consists of three core modules. The first module, the Temporal Dynamics Steering Module, enhances dynamic temporal features by employing a multi-time-awareness network to capture changes between time stamps, thereby improving the understanding of temporal data evolution. The second module, the Cross-Time Domain Gating Module, applies cross-time domain graph convolution and adaptive gating to learn relationships between different time stamps, facilitating the integration of information across multiple time spans to improve the accuracy of temporal reasoning. The third module, the Temporal Adaptive Relation Perception Module, combines temporal embeddings, causal reasoning, and multi-modal relation fusion to enhance the model’s ability to perceive temporal relationships, particularly in managing causal dependencies and complex time-based interactions. Experimental results demonstrate that TAR-TKG outperforms existing baseline methods on three real-world datasets, proving its effectiveness in capturing dynamic relationship evolution and improving temporal reasoning within TKGs.
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