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In several applications the information is naturally represented by graphs. Traditional approaches cope with graphical data structures using a preprocessing phase which transforms the graphs into a set of flat vectors. However, in this way, important topological information may be lost and the achieved results may heavily depend on the preprocessing stage. This paper presents a new neural model, called graph neural network (GNN), capable of directly processing graphs. GNNs extends recursive neural networks and can be applied on most of the practically useful kinds of graphs, including directed, undirected, labelled and cyclic graphs. A learning algorithm for GNNs is proposed and some experiments are discussed which assess the properties of the model.
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Marco Gori
University of Siena
Gabriele Monfardini
Politecnico di Milano
Franco Scarselli
University of Siena
University of Siena
Informa (Italy)
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Gori et al. (Thu,) studied this question.
synapsesocial.com/papers/69d6f1f4f174babf6cab3bef — DOI: https://doi.org/10.1109/ijcnn.2005.1555942