Intrinsic graph topological correlation for graph convolutional network propagation

dc.contributor.author Coskun, Mustafa
dc.contributor.department AGÜ, Mühendislik Fakültesi, Bilgisayar Mühendisliği Bölümü en_US
dc.contributor.institutionauthor Coskun, Mustafa
dc.date.accessioned 2022-12-12T09:23:49Z
dc.date.available 2022-12-12T09:23:49Z
dc.date.issued 2022 en_US
dc.description.abstract Recently, Graph Convolutional Networks (GCNs) and their variants become popular to learn graph-related tasks. These tasks include link prediction, node classification, and node embedding, among many others. In the node classification problem, the input is a graph with some labeled nodes and the features associated with these nodes and the objective is to predict the unlabeled nodes. While the GCNs have been successfully applied to this problem, some caveats that are inherited from classical deep learning remain unsolved. One such inherited caveat is that, during classification, GCNs only consider the nodes that are a few neighbors away from the labeled nodes. However, considering only a few steps away nodes could not effectively exploit the underlying graph topological information. To remedy this problem, the state-of-the-art methods leverage the network diffusion approaches, such as personalized PageRank and its variants, to fully account for the graph topology. However, these approaches overlook the fact that the network diffusion methods favour high degree nodes in the graph, resulting in the propagation of the labels to the unlabeled,hub nodes. In order to overcome bias, in this paper, we propose to utilize a dimensionality reduction technique, which is conjugate with personalized PageRank. Testing on four real-world networks that are commonly used in benchmarking GCNs' performance for the node classification task, we systematically evaluate the performance of the proposed methodology and show that our approach outperforms existing methods for wide ranges of parameter values. Since our method requires only a few training epochs, it releases the heavy training burden of GCNs. The source code of the proposed method is freely available at https://github.com/mustafaCoskunAgu/ScNP/blob/master/TRJMain.m. en_US
dc.identifier.endpage 7 en_US
dc.identifier.issn 0920-5489
dc.identifier.issn 1872-7018
dc.identifier.other WOS:000797918700002
dc.identifier.startpage 1 en_US
dc.identifier.uri https://doi.org/10.1016/j.csi.2022.103655
dc.identifier.uri https://hdl.handle.net/20.500.12573/1417
dc.identifier.volume 83 en_US
dc.language.iso eng en_US
dc.publisher ELSEVIER en_US
dc.relation.isversionof 10.1016/j.csi.2022.103655 en_US
dc.relation.journal Computer Standards & Interfaces en_US
dc.relation.publicationcategory Makale - Uluslararası Hakemli Dergi - Kurum Öğretim Elemanı en_US
dc.rights info:eu-repo/semantics/closedAccess en_US
dc.subject Graph convolution network en_US
dc.subject Dimensionality reduction en_US
dc.subject Deep graph learning en_US
dc.title Intrinsic graph topological correlation for graph convolutional network propagation en_US
dc.type article en_US

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