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2023 | OriginalPaper | Chapter

Improving Knowledge Graph Entity Alignment with Graph Augmentation

Authors : Feng Xie, Xiang Zeng, Bin Zhou, Yusong Tan

Published in: Advances in Knowledge Discovery and Data Mining

Publisher: Springer Nature Switzerland

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Abstract

Entity alignment (EA) which links equivalent entities across different knowledge graphs (KGs) plays a crucial role in knowledge fusion. In recent years, graph neural networks (GNNs) have been successfully applied in many embedding-based EA methods. However, existing GNN-based methods either suffer from the structural heterogeneity issue that especially appears in the real KG distributions or ignore the heterogeneous representation learning for unseen (unlabeled) entities, which would lead the model to overfit on few alignment seeds (i.e., training data) and thus cause unsatisfactory alignment performance. To enhance the EA ability, we propose GAEA, a novel EA approach based on graph augmentation. In this model, we design a simple Entity-Relation (ER) Encoder to generate latent representations for entities via jointly modeling comprehensive structural information and rich relation semantics. Moreover, we use graph augmentation to create two graph views for margin-based alignment learning and contrastive entity representation learning, thus mitigating the negative influence caused by structural heterogeneity and sparse seeds. Extensive experiments conducted on benchmark datasets demonstrate the effectiveness of our method. Our codes are available at https://​github.​com/​Xiefeng69/​GAEA.

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Literature
1.
go back to reference Bordes, A., Usunier, N., Garcia-Duran, A., Weston, J., Yakhnenko, O.: Translating embeddings for modeling multi-relational data. In: Proceedings of NIPS (2013) Bordes, A., Usunier, N., Garcia-Duran, A., Weston, J., Yakhnenko, O.: Translating embeddings for modeling multi-relational data. In: Proceedings of NIPS (2013)
2.
go back to reference Chen, M., Tian, Y., Yang, M., Zaniolo, C.: Multilingual knowledge graph embeddings for cross-lingual knowledge alignment. In: Proceedings of IJCAI (2016) Chen, M., Tian, Y., Yang, M., Zaniolo, C.: Multilingual knowledge graph embeddings for cross-lingual knowledge alignment. In: Proceedings of IJCAI (2016)
3.
go back to reference Guo, L., Sun, Z., Hu, W.: Learning to exploit long-term relational dependencies in knowledge graphs. In: Proceedings of ICML (2019) Guo, L., Sun, Z., Hu, W.: Learning to exploit long-term relational dependencies in knowledge graphs. In: Proceedings of ICML (2019)
4.
5.
go back to reference Liu, Z., Cao, Y., Pan, L., Li, J., Chua, T.S.: Exploring and evaluating attributes, values, and structures for entity alignment. In: Proceedings of EMNLP (2020) Liu, Z., Cao, Y., Pan, L., Li, J., Chua, T.S.: Exploring and evaluating attributes, values, and structures for entity alignment. In: Proceedings of EMNLP (2020)
6.
go back to reference Mao, X., Wang, W., Xu, H., Lan, M., Wu, Y.: Mraea: an efficient and robust entity alignment approach for cross-lingual knowledge graph. In: Proceedings of WSDM (2020) Mao, X., Wang, W., Xu, H., Lan, M., Wu, Y.: Mraea: an efficient and robust entity alignment approach for cross-lingual knowledge graph. In: Proceedings of WSDM (2020)
7.
go back to reference Pei, S., Yu, L., Hoehndorf, R., Zhang, X.: Semi-supervised entity alignment via knowledge graph embedding with awareness of degree difference. In: Proceedings of WWW (2019) Pei, S., Yu, L., Hoehndorf, R., Zhang, X.: Semi-supervised entity alignment via knowledge graph embedding with awareness of degree difference. In: Proceedings of WWW (2019)
8.
go back to reference Pei, S., Yu, L., Yu, G., Zhang, X.: Graph alignment with noisy supervision. In: Proceedings of WWW (2022) Pei, S., Yu, L., Yu, G., Zhang, X.: Graph alignment with noisy supervision. In: Proceedings of WWW (2022)
9.
go back to reference Rong, Y., Huang, W., Xu, T., Huang, J.: DropEdge: towards deep graph convolutional networks on node classification. arXiv preprint arXiv:1907.10903 (2019) Rong, Y., Huang, W., Xu, T., Huang, J.: DropEdge: towards deep graph convolutional networks on node classification. arXiv preprint arXiv:​1907.​10903 (2019)
11.
go back to reference Sun, Z., Chen, M., Hu, W., Wang, C., Dai, J., Zhang, W.: Knowledge association with hyperbolic knowledge graph embeddings. In: Proceedings of EMNLP (2020) Sun, Z., Chen, M., Hu, W., Wang, C., Dai, J., Zhang, W.: Knowledge association with hyperbolic knowledge graph embeddings. In: Proceedings of EMNLP (2020)
12.
go back to reference Sun, Z., Hu, W., Wang, C., Wang, Y., Qu, Y.: Revisiting embedding-based entity alignment: a robust and adaptive method. IEEE TKDE (2022) Sun, Z., Hu, W., Wang, C., Wang, Y., Qu, Y.: Revisiting embedding-based entity alignment: a robust and adaptive method. IEEE TKDE (2022)
13.
go back to reference Sun, Z., Hu, W., Zhang, Q., Qu, Y.: Bootstrapping entity alignment with knowledge graph embedding. In: Proceedings of IJCAI (2018) Sun, Z., Hu, W., Zhang, Q., Qu, Y.: Bootstrapping entity alignment with knowledge graph embedding. In: Proceedings of IJCAI (2018)
14.
go back to reference Sun, Z., et al.: Knowledge graph alignment network with gated multi-hop neighborhood aggregation. In: Proceedings of AAAI (2020) Sun, Z., et al.: Knowledge graph alignment network with gated multi-hop neighborhood aggregation. In: Proceedings of AAAI (2020)
15.
16.
go back to reference Vaswani, A., et al.: Attention is all you need. In: Proceedings of NIPS (2017) Vaswani, A., et al.: Attention is all you need. In: Proceedings of NIPS (2017)
17.
go back to reference Veličković, P., Cucurull, G., Casanova, A., Romero, A., Lio, P., Bengio, Y.: Graph attention networks. arXiv preprint arXiv:1710.10903 (2017) Veličković, P., Cucurull, G., Casanova, A., Romero, A., Lio, P., Bengio, Y.: Graph attention networks. arXiv preprint arXiv:​1710.​10903 (2017)
18.
go back to reference Veličković, P., Fedus, W., Hamilton, W.L., Liò, P., Bengio, Y., Hjelm, R.D.: Deep graph infomax. In: Proceedings of ICLR (2018) Veličković, P., Fedus, W., Hamilton, W.L., Liò, P., Bengio, Y., Hjelm, R.D.: Deep graph infomax. In: Proceedings of ICLR (2018)
19.
go back to reference Wan, S., Pan, S., Yang, J., Gong, C.: Contrastive and generative graph convolutional networks for graph-based semi-supervised learning. In: Proceedings of AAAI (2021) Wan, S., Pan, S., Yang, J., Gong, C.: Contrastive and generative graph convolutional networks for graph-based semi-supervised learning. In: Proceedings of AAAI (2021)
20.
go back to reference Wang, Z., Lv, Q., Lan, X., Zhang, Y.: Cross-lingual knowledge graph alignment via graph convolutional networks. In: Proceedings of EMNLP (2018) Wang, Z., Lv, Q., Lan, X., Zhang, Y.: Cross-lingual knowledge graph alignment via graph convolutional networks. In: Proceedings of EMNLP (2018)
21.
go back to reference Wu, Y., Liu, X., Feng, Y., Wang, Z., Yan, R., Zhao, D.: Relation-aware entity alignment for heterogeneous knowledge graphs. In: Proceedings of IJCAI (2019) Wu, Y., Liu, X., Feng, Y., Wang, Z., Yan, R., Zhao, D.: Relation-aware entity alignment for heterogeneous knowledge graphs. In: Proceedings of IJCAI (2019)
22.
go back to reference Xin, K., Sun, Z., Hua, W., Hu, W., Zhou, X.: Informed multi-context entity alignment. In: Proceedings of WSDM (2022) Xin, K., Sun, Z., Hua, W., Hu, W., Zhou, X.: Informed multi-context entity alignment. In: Proceedings of WSDM (2022)
23.
go back to reference Xu, K., Li, C., Tian, Y., Sonobe, T., Kawarabayashi, K.I., Jegelka, S.: Representation learning on graphs with jumping knowledge networks. In: ICML (2018) Xu, K., Li, C., Tian, Y., Sonobe, T., Kawarabayashi, K.I., Jegelka, S.: Representation learning on graphs with jumping knowledge networks. In: ICML (2018)
24.
go back to reference Yang, H.W., Zou, Y., Shi, P., Lu, W., Lin, J., Sun, X.: Aligning cross-lingual entities with multi-aspect information. In: Proceedings of EMNLP (2019) Yang, H.W., Zou, Y., Shi, P., Lu, W., Lin, J., Sun, X.: Aligning cross-lingual entities with multi-aspect information. In: Proceedings of EMNLP (2019)
25.
go back to reference You, Y., Chen, T., Sui, Y., Chen, T., Wang, Z., Shen, Y.: Graph contrastive learning with augmentations. In: Proceedings of NIPS (2020) You, Y., Chen, T., Sui, Y., Chen, T., Wang, Z., Shen, Y.: Graph contrastive learning with augmentations. In: Proceedings of NIPS (2020)
26.
go back to reference Yu, D., Yang, Y., Zhang, R., Wu, Y.: Knowledge embedding based graph convolutional network. In: Proceedings of WWW (2021) Yu, D., Yang, Y., Zhang, R., Wu, Y.: Knowledge embedding based graph convolutional network. In: Proceedings of WWW (2021)
27.
go back to reference Zeng, W., Zhao, X., Tang, J., Fan, C.: Reinforced active entity alignment. In: Proceedings of CIKM (2021) Zeng, W., Zhao, X., Tang, J., Fan, C.: Reinforced active entity alignment. In: Proceedings of CIKM (2021)
28.
go back to reference Zeng, W., Zhao, X., Tang, J., Lin, X.: Collective entity alignment via adaptive features. In: Proceedings of ICDE (2020) Zeng, W., Zhao, X., Tang, J., Lin, X.: Collective entity alignment via adaptive features. In: Proceedings of ICDE (2020)
29.
go back to reference Zhang, Q., Sun, Z., Hu, W., Chen, M., Guo, L., Qu, Y.: Multi-view knowledge graph embedding for entity alignment. In: Proceedings of IJCAI (2019) Zhang, Q., Sun, Z., Hu, W., Chen, M., Guo, L., Qu, Y.: Multi-view knowledge graph embedding for entity alignment. In: Proceedings of IJCAI (2019)
30.
go back to reference Zhu, H., Xie, R., Liu, Z., Sun, M.: Iterative entity alignment via knowledge embeddings. In: Proceedings of IJCAI (2017) Zhu, H., Xie, R., Liu, Z., Sun, M.: Iterative entity alignment via knowledge embeddings. In: Proceedings of IJCAI (2017)
Metadata
Title
Improving Knowledge Graph Entity Alignment with Graph Augmentation
Authors
Feng Xie
Xiang Zeng
Bin Zhou
Yusong Tan
Copyright Year
2023
DOI
https://doi.org/10.1007/978-3-031-33377-4_1

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