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Utilizing the simple graph convolutional neural network as a model for simulating influence spread in networks
2021
Computational Social Networks
AbstractThe ability for people and organizations to connect in the digital age has allowed the growth of networks that cover an increasing proportion of human interactions. The research community investigating networks asks a range of questions such as which participants are most central, and which community label to apply to each member. This paper deals with the question on how to label nodes based on the features (attributes) they contain, and then how to model the changes in the label
doi:10.1186/s40649-021-00095-y
fatcat:6ri6v32mhvevvk727wipgboxuu