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Main Authors: Goel, Diksha, Shen, Hong, Tian, Hui, Guo, Mingyu
Format: Preprint
Published: 2022
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Online Access:https://arxiv.org/abs/2212.08239
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author Goel, Diksha
Shen, Hong
Tian, Hui
Guo, Mingyu
author_facet Goel, Diksha
Shen, Hong
Tian, Hui
Guo, Mingyu
contents Structural Hole (SH) theory states that the node which acts as a connecting link among otherwise disconnected communities gets positional advantages in the network. These nodes are called Structural Hole Spanners (SHS). SHSs have many applications, including viral marketing, information dissemination, community detection, etc. Numerous solutions are proposed to discover SHSs; however, most of the solutions are only applicable to static networks. Since real-world networks are dynamic networks; consequently, in this study, we aim to discover SHSs in dynamic networks. Discovering SHSs is an NP-hard problem, due to which, instead of discovering exact k SHSs, we adopt a greedy approach to discover top-k SHSs. Motivated from the success of Graph Neural Networks (GNNs) on various graph mining problems, we design a Graph Neural Network-based model, GNN-SHS, to discover SHSs in dynamic networks, aiming to reduce the computational cost while achieving high accuracy. We analyze the efficiency of the proposed model through exhaustive experiments, and our results show that the proposed GNN-SHS model is at least 31.8 times faster and, on an average 671.6 times faster than the comparative method, providing a considerable efficiency advantage.
format Preprint
id arxiv_https___arxiv_org_abs_2212_08239
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Discovering Structural Hole Spanners in Dynamic Networks via Graph Neural Networks
Goel, Diksha
Shen, Hong
Tian, Hui
Guo, Mingyu
Social and Information Networks
Structural Hole (SH) theory states that the node which acts as a connecting link among otherwise disconnected communities gets positional advantages in the network. These nodes are called Structural Hole Spanners (SHS). SHSs have many applications, including viral marketing, information dissemination, community detection, etc. Numerous solutions are proposed to discover SHSs; however, most of the solutions are only applicable to static networks. Since real-world networks are dynamic networks; consequently, in this study, we aim to discover SHSs in dynamic networks. Discovering SHSs is an NP-hard problem, due to which, instead of discovering exact k SHSs, we adopt a greedy approach to discover top-k SHSs. Motivated from the success of Graph Neural Networks (GNNs) on various graph mining problems, we design a Graph Neural Network-based model, GNN-SHS, to discover SHSs in dynamic networks, aiming to reduce the computational cost while achieving high accuracy. We analyze the efficiency of the proposed model through exhaustive experiments, and our results show that the proposed GNN-SHS model is at least 31.8 times faster and, on an average 671.6 times faster than the comparative method, providing a considerable efficiency advantage.
title Discovering Structural Hole Spanners in Dynamic Networks via Graph Neural Networks
topic Social and Information Networks
url https://arxiv.org/abs/2212.08239