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A Multi-information Embedding Link Prediction Approach with Collective Attention Flow Network

Published: 13 December 2022 Publication History

Abstract

Link prediction and community detection reveal the basic mechanism and evolution law of the network from different perspectives, and the relationship between community members can provide valuable information for link prediction. Most link prediction methods are based on local structural features and lack the application of community topology information. To deal with this challenge, we propose a link prediction method NCELP with collective attention flow network. Firstly, we apply the Louvain algorithm to give each node a community label as an explicit feature. Secondly, using local structural features and community topology information, learned node and community embedding, which serve as implicit features. Finally, combined with the graph structure features, the link prediction problem is transformed into a binary classification problem and realized by the existence probability of the edge. We validated NCELP using behavior data from China Internet Network Information Center with more than 30,000 online users and three public datasets. Experimental results verify that NCELP not only outperforms the state-of-the-art methods on real-world datasets but also improves its AUC value by at least 9.83% and its AP value by at least 3.39%.

References

[1]
Bu Z, Wang Y, Li HJ, Jiang J, Wu Z and Cao J (2019). Link prediction in temporal networks: Integrating survival analysis and game theory. Information Sciences. 498:41-61.
[2]
De A, Bhattacharya S, Sarkar S, Ganguly N and Chakrabarti S (2016). Discriminative Link Prediction using Local, Community, and Global Signals. IEEE Trans Knowl Data Eng. 28(8):2057-2070.
[3]
Zhu J, Wang C, Gao C, Zhang F, Wang Z and Li X (2022). Community Detection in Graph: An Embedding Method. IEEE Trans Netw Sci Eng. 9(2):689-702.
[4]
Valente F (2021). Link Prediction of Artificial Intelligence Concepts using Low Computational Power. IEEE International Conference on Big Data (Big Data), 5828–32.
[5]
Hao Y, Cao X, Fang Y, Xie X and Wang S (2020). Inductive Link Prediction for Nodes Having Only Attribute Information. Proceedings of the Twenty-Ninth International Joint Conference on Artificial Intelligence. International Joint Conferences on Artificial Intelligence Organization; 2020:1209-1215.
[6]
Soundarajan S and Hopcroft J (2012). Using community information to improve the precision of link prediction methods. In: Proceedings of the 21st International Conference Companion on World Wide Web - WWW ’12 Companion. ACM Press; 2012:607.
[7]
Saxena A, Fletcher G and Pechenizkiy M (2021). NodeSim: Node Similarity based Network Embedding for Diverse Link Prediction. arXiv:2102.00785.
[8]
Wu S, Rizoiu MA and Xie L (2019). Estimating Attention Flow in Online Video Networks. Proc ACM Hum-Comput Interact. 3(CSCW):1-25.
[9]
Chen Y, Dai Y, Han X, Ge Y, Yin H and Li P (2021). Dig users’ intentions via attention flow network for personalized recommendation. Information Sciences. 547:1122-1135.
[10]
Guo S, Lin Y, Feng N, Song C and Wan H (2019). Attention Based Spatial-Temporal Graph Convolutional Networks for Traffic Flow Forecasting. AAAI. 33:922-929.
[11]
Zhang M, Cui Z, Neumann M, Chen Y (2018). An End-to-End Deep Learning Architecture for Graph Classification. Proceedings of the Thirty-Second AAAI Conference on Artificial Intelligence 4438–4445.
[12]
Zhang M, Chen Y (2018). Link prediction based on graph neural networks. Proceedings of the 32nd International Conference on Neural Information Processing Systems (NIPS'18). Curran Associates Inc. Red Hook, NY, USA, 5171–5181.
[13]
Vincent D, Blondel, Guillaume JL, Lambiotte R, and Lefebvre E (2008). Fast Unfolding of Communities in Large Networks. Journal of Statistical Mechanics: Theory and Experiment 2008 (10): P10008.
[14]
Costas M and George K (2020). Graph InfoClust: Leveraging cluster-level node information for unsupervised graph representation learning. arXiv:2009.06946.
[15]
Yu T, Long Z, Xi P, and Dimitris N (2019). Rethinking kernel methods for node representation learning on graphs. Proceedings of the 33rd International Conference on Neural Information Processing Systems. Curran Associates Inc., Red Hook, NY, USA, Article 1048, 11686–11697.
[16]
Liang H and Gao J (2022). How Neural Processes Improve Graph Link Prediction. In: ICASSP 2022 - 2022 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP). IEEE; 2022:3543-3547.

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  1. A Multi-information Embedding Link Prediction Approach with Collective Attention Flow Network

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    CSAE '22: Proceedings of the 6th International Conference on Computer Science and Application Engineering
    October 2022
    411 pages
    ISBN:9781450396004
    DOI:10.1145/3565387
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    Publication History

    Published: 13 December 2022

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    Author Tags

    1. Collective attention flow network
    2. Community embedding
    3. Deep learning
    4. Link prediction
    5. Node embedding

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