Towards Unsupervised Entity Alignment for Highly Heterogeneous Knowledge Graphs

Published: 2025, Last Modified: 21 Jan 2026ICDE 2025EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: Highly Heterogeneous Entity Alignment (HHEA) represents a more realistic application scenario of Entity Alignment (EA). This challenging task aims to align equivalent entities between highly heterogeneous knowledge graphs (HHKGs) with significant differences in structure, scale, and overlap. In practice, obtaining labeled data for HHEA is often difficult, necessitating research into unsupervised HHEA. This involves addressing several challenges, including the difficulty in capturing structural and semantic associations between HHKGs, the absence of explicit HHEA paradigms, and the high time and computational costs. Unfortunately, there is no solution for unsupervised HHEA. To bridge this gap, this paper formally investigates the unsupervised HHEA problem and proposes an effective unsupervised HHEA solution, AdaCoAgentEA, which addresses the challenges of unsupervised HHEA from the perspective of multi-agent collaboration. Specifically, we design an adaptive collaboration framework with three functional areas powered by multi-agent LLMs and small models, effectively eliminating dependence on labeled data while capturing structural and semantic correlations between HHKGs. Furthermore, we design a suite of optimization tools for AdaCoAgentEA, including meta-alignment mechanisms and communication protocols, which facilitate effective associations between HHKGs and provide explicit HHEA paradigms while reducing time and computational costs. Extensive experiments demonstrate that our proposed framework achieves state-of-the-art performance in both unsupervised HHEA and classic EA tasks across five datasets, rivaling fully supervised models while maintaining high efficiency and scalability.
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