SynergyKGC: Reconciling Topological Heterogeneity in Knowledge Graph Completion via Topology-Aware Synergy
AI 摘要
SynergyKGC通过拓扑感知协同机制解决知识图谱补全中的结构异构问题,提升推理性能。
主要贡献
- 提出一种自适应框架SynergyKGC,有效融合异构拓扑结构。
- 引入关系感知的跨模态协同专家和语义意图驱动的门控机制。
- 结合密度相关的身份锚定策略和双塔一致性架构,保证表示稳定性。
方法论
采用基于关系感知注意力机制的跨模态协同专家和双塔一致性架构,缓解结构异构带来的问题。
原文摘要
Knowledge Graph Completion (KGC) fundamentally hinges on the coherent fusion of pre-trained entity semantics with heterogeneous topological structures to facilitate robust relational reasoning. However, existing paradigms encounter a critical "structural resolution mismatch," failing to reconcile divergent representational demands across varying graph densities, which precipitates structural noise interference in dense clusters and catastrophic representation collapse in sparse regions. We present SynergyKGC, an adaptive framework that advances traditional neighbor aggregation to an active Cross-Modal Synergy Expert via relation-aware cross-attention and semantic-intent-driven gating. By coupling a density-dependent Identity Anchoring strategy with a Double-tower Coherent Consistency architecture, SynergyKGC effectively reconciles topological heterogeneity while ensuring representational stability across training and inference phases. Systematic evaluations on two public benchmarks validate the superiority of our method in significantly boosting KGC hit rates, providing empirical evidence for a generalized principle of resilient information integration in non-homogeneous structured data.