Social Networking

Social Networking

ISSN Print: 2169-3285
ISSN Online: 2169-3323
www.scirp.org/journal/sn
E-mail: sn@scirp.org
"Terrorist Networks, Network Energy and Node Removal: A New Measure of Centrality Based on Laplacian Energy"
written by Xingqin Qi, Robert D. Duval, Kyle Christensen, Edgar Fuller, Arian Spahiu, Qin Wu, Yezhou Wu, Wenliang Tang, Cunquan Zhang,
published by Social Networking, Vol.2 No.1, 2013
has been cited by the following article(s):
  • Google Scholar
  • CrossRef
[1] Identifying spreading influence nodes for social networks
Frontiers of Engineering Management, 2022
[2] A novel method to identify influential nodes in complex networks based on gravity centrality
Information Sciences, 2022
[3] Identifying key nodes in interdependent networks based on Supra-Laplacian energy
Journal of Computational Science, 2022
[4] Screening Heuristics for the Evaluation of Covert Network Node Insertion Scenarios
2022
[5] Dismantling Interdependent Networks Based on Supra-Laplacian Energy
… Conference on Science of Cyber Security, 2021
[6] Diffusion profile embedding as a basis for graph vertex similarity
Network Science, 2021
[7] Unsupervised Common Particular Object Discovery and Localization by Analyzing a Match Graph
2021
[8] Graph active learning for GCN-based zero-shot classification
2021
[9] Analysing terrorist networks–An entropy‐driven method
2021
[10] Energy disruptive centrality with an application to criminal network
2021
[11] Effect of Infant Presence on Social Networks of Sterilized and Intact Wild Female Balinese Macaques (Macaca fascicularis)
Animals, 2021
[12] Brain hothubs and dark functional networks: correlation analysis between amplitude and connectivity for Broca's aphasia
2020
[13] 电动汽车充电桩 CAN 总线协议的安全检测
2020
[14] 基于时序和 TOPSIS 的社交网络节点重要性评价算法
2020
[15] Intervention algorithm for malicious information in online social networks based on trusted regulator
2020
[16] Two Laplacian energies and the relations between them
2020
[17] Measuring systemic risk and contagion in the European financial network
2019
[18] Leveraging Social Network Analysis for Characterizing Cohesion of Human-Managed Animals
2019
[19] 复杂网络关键节点组识别问题模型和算法研究
2019
[20] A new metric to quantify influence of nodes in social networks
2019
[21] Text Summarisation Using Laplacian Centrality-Based Minimum Vertex Cover
2019
[22] Identifying, Ranking and Tracking Community Leaders in Evolving Social Networks
2019
[23] Predicting Discussion Levels on Community Question-And-Answer Platforms using Expertise Networks
2018
[24] Profiling giants: the networks and influence of Buchanan and Tullock
Public Choice, 2018
[25] Dynamic Laplace: Efficient Centrality Measure for Weighted or Unweighted Evolving Networks
2018
[26] Evolving Networks and Social Network Analysis Methods and Techniques
Social Media and Journalism-Trends, Connections, 2018
[27] The Structural Vulnerability Analysis of Power Grids Based on Laplacian Centrality
Journal of Information Hiding and Multimedia Signal Processing, 2018
[28] Highly Repeatable Feature Point Detection in Images Using Laplacian Graph Centrality
2018
[29] Social Centrality using Network Hierarchy and Community Structure
2018
[30] Consistency and differences between centrality measures across distinct classes of networks
2018
[31] Interest point detection based on Laplacian energy of local image network
2017
[32] On Biological Network Visualization: Understanding Challenges, Measuring the Status Quo, and Estimating Saliency of Visual Attributes
2017
[33] Identifizierung von führenden Köpfen in terroristischen Netzwerken–ein entropiebasiertes Verfahren–
2017
[34] Efficient Incremental Laplace Centrality Algorithm for Dynamic Networks
Complex Networks & Their Applications VI, 2017
[35] 基于多层次灰色关联分析的创新合作网络节点评估研究
2017
[36] Identifizierung von führenden Köpfen in terroristischen Netzwerken: ein entropiebasiertes Verfahren
2017
[37] 基于 Kullback-Leibler 距离的网络节点一致性排序
2016
[38] The Important Node Assessment Method of Satellite Network Based on Near the Center
2016
[39] IPv6 AS 级 Internet 抗毁性研究
2015
[40] 复杂网络的节点重要性综合评价
2015
[41] Analisis Dan Implementasi Probabilistic Partnership Index (ppi) Pada Laplacian Centrality Dalam Social Network Analysis
2015
[42] The node importance in actual complex networks based on a multi-attribute ranking method
Knowledge-Based Systems, 2015
[43] Analisis Metode Laplacian Centrality dalam Social Network Analysis menggunakan Probabilistic Affinity Index (PAI)
2015
[44] ANALISIS DAN IMPLEMENTASI PROBABILISTIC PARTNERSHIP INDEX (PPI) PADA LAPLACIAN CENTRALITY DALAM SOCIAL NETWORK ANALYSIS ANALYSIS AND IMPLEMENTATION OF PROBABILISTIC PARTNERSHIP INDEX (PPI) ON LAPLACIAN CENTRALITY IN SOCIAL NETWORK ANALYSIS
network, 2015
[45] A Risk Based Approach to Node Insertion Within Social Networks
2015
[46] Robust Features for Detecting Evasive Spammers in Twitter
Advances in Artificial Intelligence, 2014
[47] Understanding Large Temporal Networks and Spatial Networks: Exploration, Pattern Searching, Visualization and Network Evolution
2014
[48] Social network Analysis Menggunakan Metode Laplacian Centrality Social network Analysis Using Laplacian Centrality Method
MR Takkini, WM Adiwijaya - cdndata.ittelkom.ac.id, 2014
[49] A Novel Method of Centrality in Terrorist Network
Computational Intelligence and Design (ISCID), 2014 Seventh International Symposium on, 2014
[50] Group disappearance in social networks with communities
Social Network Analysis and Mining, 2013
[51] How Do the Evolution and Innovation of Social Network Analysis Matter to Computer Science and Communications?
Social Networking, 2013
Free SCIRP Newsletters
Copyright © 2006-2024 Scientific Research Publishing Inc. All Rights Reserved.
Top