AIIRLGMay 20, 2025

Disentangled Multi-span Evolutionary Network against Temporal Knowledge Graph Reasoning

arXiv:2505.14020v24 citationsh-index: 13ACL
Originality Incremental advance
AI Analysis

This work addresses TKG reasoning for AI applications requiring temporal prediction, but it is incremental as it builds on existing sequence-based methods with specific enhancements.

The paper tackles the problem of Temporal Knowledge Graph (TKG) extrapolation by proposing DiMNet, which improves reasoning performance by capturing internal structural interactions and distinguishing smooth features, achieving up to 22.7% higher MRR than state-of-the-art methods.

Temporal Knowledge Graphs (TKGs), as an extension of static Knowledge Graphs (KGs), incorporate the temporal feature to express the transience of knowledge by describing when facts occur. TKG extrapolation aims to infer possible future facts based on known history, which has garnered significant attention in recent years. Some existing methods treat TKG as a sequence of independent subgraphs to model temporal evolution patterns, demonstrating impressive reasoning performance. However, they still have limitations: 1) In modeling subgraph semantic evolution, they usually neglect the internal structural interactions between subgraphs, which are actually crucial for encoding TKGs. 2) They overlook the potential smooth features that do not lead to semantic changes, which should be distinguished from the semantic evolution process. Therefore, we propose a novel Disentangled Multi-span Evolutionary Network (DiMNet) for TKG reasoning. Specifically, we design a multi-span evolution strategy that captures local neighbor features while perceiving historical neighbor semantic information, thus enabling internal interactions between subgraphs during the evolution process. To maximize the capture of semantic change patterns, we design a disentangle component that adaptively separates nodes' active and stable features, used to dynamically control the influence of historical semantics on future evolution. Extensive experiments conducted on four real-world TKG datasets show that DiMNet demonstrates substantial performance in TKG reasoning, and outperforms the state-of-the-art up to 22.7% in MRR.

Foundations

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