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Network Node Completion Based on Graph Convolutional Network |
LIU Chen1, LI Ziran1, ZHOU Lixin1 |
1. Business School, University of Shanghai for Science and Technology, Shanghai 200093 |
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Abstract Aiming at the incomplete network data and missing nodes in graph data structure, a network node completion algorithm based on graph convolutional network is proposed. Firstly, the observed network is sampled in pairs to construct the closed subgraph and feature matrix of the target node pair. Then, the graph convolutional neural network is employed to extract the representation vectors of subgraphs and their feature matrices for two purposes. One is to infer whether there are missing nodes between target node pairs of each subgraph, and the other is whether the missing nodes between different target node pairs are the same node. Finally, experiments on real network datasets and artificially generated network datasets show that the proposed model can solve the problem of network completion well and recover the network even when half of the nodes in the network are missing.
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Received: 27 January 2021
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Fund:National Natural Science Foundation of China(No.71774111,71804047,71401107), Program for Professor of Special Appointment(Eastern Scholar) at Shanghai Institutions of Higher Learning(No.1021303601) |
Corresponding Authors:
ZHOU Lixin, Ph.D. His research interests include link prediction and deep learning.
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About author:: LIU Chen, Ph.D., associate professor. His research interests include web data mi-ning, internet user behavior analysis and deep learning. LI Ziran, master student. Her research interests include network completion and link prediction. |
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