Info2vec: an aggregative representation method in multi-layer and heterogeneous networks
Mapping nodes in multi-layer and heterogeneous networks to low-dimensional vectors has wide applications in community detection, node classification and link prediction, etc. In this paper, a generalized graph representation learning framework is proposed for information aggregation in various multi...
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sg-ntu-dr.10356-1595192022-06-24T07:08:15Z Info2vec: an aggregative representation method in multi-layer and heterogeneous networks Yang, Guoli Kang, Yuanji Zhu, Xianqiang Zhu, Cheng Xiao, Gaoxi School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Multi-Layer Networks Representation Learning Mapping nodes in multi-layer and heterogeneous networks to low-dimensional vectors has wide applications in community detection, node classification and link prediction, etc. In this paper, a generalized graph representation learning framework is proposed for information aggregation in various multi-layer and heterogeneous networks. Specifically, an aggregation network is firstly obtained by graph transformation, generating potential information links based on the network structure on different layers. A comprehensive measurement of the similarity between different nodes in the aggregation network is then carried out by aggregating the information of nodes’ identities of structure, nearness and attributes etc. Based on the comprehensive similarity values the nodes have, a context graph can be generated using a simple edge percolation method, which provides a basis facilitating some important downstream work such as classification, clustering and prediction etc. We demonstrate the effectiveness of the new framework in identifying subnetworks in a cyberspace network, where it significantly outperforms all the existing baselines. Ministry of Education (MOE) G.Y. and Y.K. were supported by NSSFC 2019-SKJJ-C-005. G.X. was supported by the Ministry of Education (MOE), Singapore, under contract RG19/20. 2022-06-24T07:08:14Z 2022-06-24T07:08:14Z 2021 Journal Article Yang, G., Kang, Y., Zhu, X., Zhu, C. & Xiao, G. (2021). Info2vec: an aggregative representation method in multi-layer and heterogeneous networks. Information Sciences, 574, 444-460. https://dx.doi.org/10.1016/j.ins.2021.06.013 0020-0255 https://hdl.handle.net/10356/159519 10.1016/j.ins.2021.06.013 2-s2.0-85108434666 574 444 460 en RG19/20 Information Sciences © 2021 Elsevier Inc. All rights reserved. |
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Engineering::Electrical and electronic engineering Multi-Layer Networks Representation Learning Yang, Guoli Kang, Yuanji Zhu, Xianqiang Zhu, Cheng Xiao, Gaoxi Info2vec: an aggregative representation method in multi-layer and heterogeneous networks |
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Mapping nodes in multi-layer and heterogeneous networks to low-dimensional vectors has wide applications in community detection, node classification and link prediction, etc. In this paper, a generalized graph representation learning framework is proposed for information aggregation in various multi-layer and heterogeneous networks. Specifically, an aggregation network is firstly obtained by graph transformation, generating potential information links based on the network structure on different layers. A comprehensive measurement of the similarity between different nodes in the aggregation network is then carried out by aggregating the information of nodes’ identities of structure, nearness and attributes etc. Based on the comprehensive similarity values the nodes have, a context graph can be generated using a simple edge percolation method, which provides a basis facilitating some important downstream work such as classification, clustering and prediction etc. We demonstrate the effectiveness of the new framework in identifying subnetworks in a cyberspace network, where it significantly outperforms all the existing baselines. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Yang, Guoli Kang, Yuanji Zhu, Xianqiang Zhu, Cheng Xiao, Gaoxi |
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Article |
author |
Yang, Guoli Kang, Yuanji Zhu, Xianqiang Zhu, Cheng Xiao, Gaoxi |
author_sort |
Yang, Guoli |
title |
Info2vec: an aggregative representation method in multi-layer and heterogeneous networks |
title_short |
Info2vec: an aggregative representation method in multi-layer and heterogeneous networks |
title_full |
Info2vec: an aggregative representation method in multi-layer and heterogeneous networks |
title_fullStr |
Info2vec: an aggregative representation method in multi-layer and heterogeneous networks |
title_full_unstemmed |
Info2vec: an aggregative representation method in multi-layer and heterogeneous networks |
title_sort |
info2vec: an aggregative representation method in multi-layer and heterogeneous networks |
publishDate |
2022 |
url |
https://hdl.handle.net/10356/159519 |
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1736856399164473344 |