Title
Identification of spreading influence nodes via multi-level structural attributes based on the graph convolutional network
Abstract
The network structural properties at the micro-level, community-level and macro-level have different contributions to the spreading influence of nodes. The challenge is how to make better use of different structural information while keeping the efficiency of the spreading influence identification algorithm. By taking the micro-level, community-level and macro-level structural information into account, an improved graph convolutional network based algorithm, namely the multi-channel RCNN (M-RCNN) is proposed to identify spreading influence nodes. As we focus on both the efficiency and accuracy of the algorithm, three centralities with low computational complexity are introduced: the sum of neighbors’ degree, the number of communities a node is connected with, and the k-core value. To construct the input of the M-RCNN, we first use the Breadth-first algorithm to extract a fixed-size neighborhood network for each node. Then exploit three matrices to encode the input of nodes rather than simply embedding different levels of structural information into the same matrix, which allows the weights that couple the three structural properties to be learned automatically during the training process. The experiments conducted on nine real-world networks show that, on average, compared with the RCNN algorithm, the accuracy obtained by the M-RCNN outperforms by 9.25%. By conducting efficiency test on nine Barabasi–Albert networks, the results show that the computational complexity of the M-RCNN is close to the RCNN. This work is helpful for deeply understanding the effects of network structure on the graph convolutional network performance.
Year
DOI
Venue
2022
10.1016/j.eswa.2022.117515
Expert Systems with Applications
Keywords
DocType
Volume
91D30,94C15
Journal
203
ISSN
Citations 
PageRank 
0957-4174
0
0.34
References 
Authors
0
4
Name
Order
Citations
PageRank
Yang Ou100.34
Qiang Guo200.34
Jia-Liang Xing300.34
Jianguo Liu401.35