Understanding and Guiding Weakly Supervised Entity Alignment with Potential Isomorphism Propagation

Weakly Supervised Entity Alignment (EA) is the task of identifying equivalent entities across diverse knowledge graphs (KGs) using only a limited number of seed alignments. Despite substantial advances in aggregation-based weakly supervised EA, the underlying mechanisms in this setting remain unexplored. In this paper, we present a propagation perspective to analyze weakly supervised EA and explain the existing aggregation-based EA models. Our theoretical analysis reveals that these models essentially seek propagation operators for pairwise entity similarities. We further prove that, despite the structural heterogeneity of different KGs, the potentially aligned entities within aggregation-based EA models have isomorphic subgraphs, which is the core premise of EA but has not been investigated. Leveraging this insight, we introduce a potential isomorphism propagation operator to enhance the propagation of neighborhood information across KGs. We develop a general EA framework, PipEA, incorporating this operator to improve the accuracy of every type of aggregation-based model without altering the learning process. Extensive experiments substantiate our theoretical findings and demonstrate PipEA's significant performance gains over state-of-the-art weakly supervised EA methods. Our work not only advances the field but also enhances our comprehension of aggregation-based weakly supervised EA.

[1]  Jingyu Wang,et al.  Towards Semantic Consistency: Dirichlet Energy Driven Robust Multi-Modal Entity Alignment , 2024, 2024 IEEE 40th International Conference on Data Engineering (ICDE).

[2]  Jingyu Wang,et al.  Gradient Flow of Energy: A General and Efficient Approach for Entity Alignment Decoding , 2024, ArXiv.

[3]  Fanyu Kong,et al.  Mixed-Curvature Manifolds Interaction Learning for Knowledge Graph-aware Recommendation , 2023, SIGIR.

[4]  Wen Hua,et al.  TEA: Time-aware Entity Alignment in Knowledge Graphs , 2023, WWW.

[5]  Jingyu Wang,et al.  Weakly Supervised Entity Alignment with Positional Inspiration , 2023, WSDM.

[6]  Soumen Chakrabarti Deep Knowledge Graph Representation Learning for Completion, Alignment, and Question Answering , 2022, SIGIR.

[7]  Deepak Chaurasiya,et al.  RePS: Relation, Position and Structure aware Entity Alignment , 2022, WWW.

[8]  Dandan Song,et al.  Uncertainty-aware Pseudo Label Refinery for Entity Alignment , 2022, WWW.

[9]  Jiuyang Tang,et al.  Reinforced Active Entity Alignment , 2021, CIKM.

[10]  Yuanbin Wu,et al.  Are Negative Samples Necessary in Entity Alignment?: An Approach with High Performance, Scalability and Robustness , 2021, CIKM.

[11]  Wei Hu,et al.  Knowing the No-match: Entity Alignment with Dangling Cases , 2021, ACL.

[12]  Man Lan,et al.  Boosting the Speed of Entity Alignment 10 ×: Dual Attention Matching Network with Normalized Hard Sample Mining , 2021, WWW.

[13]  Mark Heimann,et al.  Refining Network Alignment to Improve Matched Neighborhood Consistency , 2021, SDM.

[14]  Zhonghai Wu,et al.  Relation-Aware Neighborhood Matching Model for Entity Alignment , 2020, AAAI.

[15]  Chen Gong,et al.  Contrastive and Generative Graph Convolutional Networks for Graph-based Semi-Supervised Learning , 2020, AAAI.

[16]  Wenting Wang,et al.  Relational Reflection Entity Alignment , 2020, CIKM.

[17]  Jiuyang Tang,et al.  An Experimental Study of State-of-the-Art Entity Alignment Approaches , 2020, IEEE Transactions on Knowledge and Data Engineering.

[18]  Yasha Wang,et al.  COTSAE: CO-Training of Structure and Attribute Embeddings for Entity Alignment , 2020, AAAI.

[19]  Volker Tresp,et al.  Active Learning for Entity Alignment , 2020, ECIR.

[20]  Wenting Wang,et al.  MRAEA: An Efficient and Robust Entity Alignment Approach for Cross-lingual Knowledge Graph , 2020, WSDM.

[21]  Chengjiang Li,et al.  Semi-supervised Entity Alignment via Joint Knowledge Embedding Model and Cross-graph Model , 2019, EMNLP.

[22]  Piotr Indyk,et al.  Learning-Based Low-Rank Approximations , 2019, NeurIPS.

[23]  Rui Zhang,et al.  Entity Alignment between Knowledge Graphs Using Attribute Embeddings , 2019, AAAI.

[24]  Yoshua Bengio,et al.  Weakly-supervised Knowledge Graph Alignment with Adversarial Learning , 2019, ArXiv.

[25]  Xiaokui Xiao,et al.  Homogeneous network embedding for massive graphs via reweighted personalized PageRank , 2019, Proc. VLDB Endow..

[26]  Zhewei Wei,et al.  Scalable Graph Embeddings via Sparse Transpose Proximities , 2019, KDD.

[27]  Lu Yu,et al.  Semi-Supervised Entity Alignment via Knowledge Graph Embedding with Awareness of Degree Difference , 2019, WWW.

[28]  Yuting Wu,et al.  Relation-Aware Entity Alignment for Heterogeneous Knowledge Graphs , 2019, IJCAI.

[29]  Tomoyuki Obuchi,et al.  Mean-field theory of graph neural networks in graph partitioning , 2018, NeurIPS.

[30]  Stephan Günnemann,et al.  Predict then Propagate: Graph Neural Networks meet Personalized PageRank , 2018, ICLR.

[31]  Jian Pei,et al.  Arbitrary-Order Proximity Preserved Network Embedding , 2018, KDD.

[32]  Wei Hu,et al.  Bootstrapping Entity Alignment with Knowledge Graph Embedding , 2018, IJCAI.

[33]  Emmanuel Müller,et al.  VERSE: Versatile Graph Embeddings from Similarity Measures , 2018, WWW.

[34]  Pietro Liò,et al.  Graph Attention Networks , 2017, ICLR.

[35]  Max Welling,et al.  Semi-Supervised Classification with Graph Convolutional Networks , 2016, ICLR.

[36]  Marco Cuturi,et al.  Sinkhorn Distances: Lightspeed Computation of Optimal Transport , 2013, NIPS.

[37]  Y. Saad Numerical Methods for Large Eigenvalue Problems , 2011 .

[38]  Rajeev Motwani,et al.  The PageRank Citation Ranking : Bringing Order to the Web , 1999, WWW 1999.

[39]  Man Lan,et al.  An Effective and Efficient Entity Alignment Decoding Algorithm via Third-Order Tensor Isomorphism , 2022, ACL.

[40]  Philip S. Yu,et al.  A Comprehensive Survey on Graph Neural Networks , 2019, IEEE Transactions on Neural Networks and Learning Systems.

[41]  Zhichun Wang,et al.  Cross-lingual Knowledge Graph Alignment via Graph Convolutional Networks , 2018, EMNLP.