A novel voting measure for identifying influential nodes in complex networks based on local structure

Abstract Identifying influential nodes in real networks is significant in studying and analyzing the structural as well as functional aspects of networks. VoteRank is a simple and effective algorithm to identify high-spreading nodes. The accuracy and monotonicity of the VoteRank algorithm are poor a...

Full description

Saved in:
Bibliographic Details
Main Authors: Haoyang Li, Xing Wang, You Chen, Siyi Cheng, Dejiang Lu
Format: Article
Language:English
Published: Nature Portfolio 2025-01-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-025-85332-4
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1841544765008510976
author Haoyang Li
Xing Wang
You Chen
Siyi Cheng
Dejiang Lu
author_facet Haoyang Li
Xing Wang
You Chen
Siyi Cheng
Dejiang Lu
author_sort Haoyang Li
collection DOAJ
description Abstract Identifying influential nodes in real networks is significant in studying and analyzing the structural as well as functional aspects of networks. VoteRank is a simple and effective algorithm to identify high-spreading nodes. The accuracy and monotonicity of the VoteRank algorithm are poor as the network topology fails to be taken into account.Given the nodes’ attributes and neighborhood structure, this paper put forward an algorithm based on the Edge Weighted VoteRank (EWV) for identifying influential nodes in the network. The proposed algorithm draws inspiration from human voting behavior and expresses the attractiveness of nodes to their first-order neighborhood using the weights of connecting edges. Similarity between nodes is introduced into the voting process, further enhancing the accuracy of the method. Additionally, this EWV algorithm addresses the problem of influential node clustering by reducing the voting ability of nodes in the second-order neighborhood of the most influential nodes. The validity of the presented algorithm is verified through experiments conducted on 12 different real networks of various sizes and structures, directly comparing it with 7 competing algorithms.Empirical results indicate a superiority of the presented algorithm over the remaining seven competing algorithms with respect to node differentiation ability, effectiveness, and ranked list accuracy.
format Article
id doaj-art-901af7a5b55b4d9689adc2602d2450f2
institution Kabale University
issn 2045-2322
language English
publishDate 2025-01-01
publisher Nature Portfolio
record_format Article
series Scientific Reports
spelling doaj-art-901af7a5b55b4d9689adc2602d2450f22025-01-12T12:20:37ZengNature PortfolioScientific Reports2045-23222025-01-0115112010.1038/s41598-025-85332-4A novel voting measure for identifying influential nodes in complex networks based on local structureHaoyang Li0Xing Wang1You Chen2Siyi Cheng3Dejiang Lu4Air Force Engineering UniversityAir Force Engineering UniversityAir Force Engineering UniversityAir Force Engineering UniversityAir Force Engineering UniversityAbstract Identifying influential nodes in real networks is significant in studying and analyzing the structural as well as functional aspects of networks. VoteRank is a simple and effective algorithm to identify high-spreading nodes. The accuracy and monotonicity of the VoteRank algorithm are poor as the network topology fails to be taken into account.Given the nodes’ attributes and neighborhood structure, this paper put forward an algorithm based on the Edge Weighted VoteRank (EWV) for identifying influential nodes in the network. The proposed algorithm draws inspiration from human voting behavior and expresses the attractiveness of nodes to their first-order neighborhood using the weights of connecting edges. Similarity between nodes is introduced into the voting process, further enhancing the accuracy of the method. Additionally, this EWV algorithm addresses the problem of influential node clustering by reducing the voting ability of nodes in the second-order neighborhood of the most influential nodes. The validity of the presented algorithm is verified through experiments conducted on 12 different real networks of various sizes and structures, directly comparing it with 7 competing algorithms.Empirical results indicate a superiority of the presented algorithm over the remaining seven competing algorithms with respect to node differentiation ability, effectiveness, and ranked list accuracy.https://doi.org/10.1038/s41598-025-85332-4Complex networksInfluential nodesEdge Weighted VoteRankSI modelSIR model
spellingShingle Haoyang Li
Xing Wang
You Chen
Siyi Cheng
Dejiang Lu
A novel voting measure for identifying influential nodes in complex networks based on local structure
Scientific Reports
Complex networks
Influential nodes
Edge Weighted VoteRank
SI model
SIR model
title A novel voting measure for identifying influential nodes in complex networks based on local structure
title_full A novel voting measure for identifying influential nodes in complex networks based on local structure
title_fullStr A novel voting measure for identifying influential nodes in complex networks based on local structure
title_full_unstemmed A novel voting measure for identifying influential nodes in complex networks based on local structure
title_short A novel voting measure for identifying influential nodes in complex networks based on local structure
title_sort novel voting measure for identifying influential nodes in complex networks based on local structure
topic Complex networks
Influential nodes
Edge Weighted VoteRank
SI model
SIR model
url https://doi.org/10.1038/s41598-025-85332-4
work_keys_str_mv AT haoyangli anovelvotingmeasureforidentifyinginfluentialnodesincomplexnetworksbasedonlocalstructure
AT xingwang anovelvotingmeasureforidentifyinginfluentialnodesincomplexnetworksbasedonlocalstructure
AT youchen anovelvotingmeasureforidentifyinginfluentialnodesincomplexnetworksbasedonlocalstructure
AT siyicheng anovelvotingmeasureforidentifyinginfluentialnodesincomplexnetworksbasedonlocalstructure
AT dejianglu anovelvotingmeasureforidentifyinginfluentialnodesincomplexnetworksbasedonlocalstructure
AT haoyangli novelvotingmeasureforidentifyinginfluentialnodesincomplexnetworksbasedonlocalstructure
AT xingwang novelvotingmeasureforidentifyinginfluentialnodesincomplexnetworksbasedonlocalstructure
AT youchen novelvotingmeasureforidentifyinginfluentialnodesincomplexnetworksbasedonlocalstructure
AT siyicheng novelvotingmeasureforidentifyinginfluentialnodesincomplexnetworksbasedonlocalstructure
AT dejianglu novelvotingmeasureforidentifyinginfluentialnodesincomplexnetworksbasedonlocalstructure