Network Analysis Resources & Updates
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πŸ“„Characterization of complex networks: A survey of measurements

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Study

πŸ“²Channel: @ComplexNetworkAnalysis

#paper #survey
πŸ“„Social Network Analysis: From Graph Theory to Applications with Python

πŸ—“Publish year: 2021

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Paper
πŸ“½ Video
πŸ’» Code

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Our Channels πŸ‘‡πŸ‘‡πŸ‘‡
πŸ“² @ComplexNetworkAnalysis
πŸ“² @Bioinformatics

#paper #python #video #code
🎞 Introduction to network science

πŸ’₯Free recorded Lecture by Prof. Leonid Zhukov, Ilya Makarov.

πŸ’₯Introduction to the complex network theory. Network properties and metrics.

πŸ“½ Watch

πŸ“‘Lecture

πŸ“²Channel: @ComplexNetworkAnalysis

#video #Lecture
πŸ“„The architecture of complex weighted networks

πŸ“ŽStudy paper

πŸ“²Channel: @ComplexNetworkAnalysis

#paper
πŸ“„Evolutionary Computation in Social Propagation over Complex Networks: A Survey

πŸ“˜Journal: International Journal of Automation and Computing (I.F=3.175)


πŸ—“Publish year: 2021

πŸ“ŽStudy paper

πŸ“²Channel: @ComplexNetworkAnalysis
#paper #Survey
πŸ“„Network data
πŸ’₯This page contains links to some network data sets I've compiled over the years. All of these are free for scientific use to the best of my knowledge, meaning that the original authors have already made the data freely available, or that I have consulted the authors and received permission to the post the data here, or that the data are mine. If you make use of any of these data, please cite the original sources.

πŸ“ŽMost popular network datasets

πŸ“²Channel: @ComplexNetworkAnalysis
#dataset
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πŸ“„Pearson Correlations on Complex Networks

πŸ“˜Journal: Journal of Complex Networks (I.F= 2.011)

πŸ—“Publish year: 2021

πŸ“ŽStudy paper

πŸ“²Channel: @ComplexNetworkAnalysis
#paper
πŸ“„A Survey on the Role of Centrality as Seed Nodes for Information Propagation in Large Scale Network

πŸ“˜Journal: ACM/IMS Transactions on Data Science

πŸ—“Publish year: 2021

πŸ“ŽStudy paper

πŸ“²Channel: @ComplexNetworkAnalysis
#paper #Survey
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πŸ“„Local controllability of complex networks

πŸ“˜Journal: Mathematical Modelling and Control (I.F= 5.129)

πŸ—“Publish year: 2021

πŸ“ŽStudy paper

πŸ“²Channel: @ComplexNetworkAnalysis
#paper
πŸ“„A Comprehensive Survey on Trustworthy Graph Neural Networks: Privacy, Robustness, Fairness, and Explainability
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Technical paper

πŸ—“Publish year: 2022

πŸ“ŽStudy paper

πŸ“²Channel: @ComplexNetworkAnalysis
#paper
🎞 Complex Network: Theory and Application

πŸ’₯Free recorded course by Prof. Animesh Mukherjee, Department of Computer Science and Engineering, IIT Kharagpur.

πŸ’₯This course covers lessons in network analysis, properties of social networks, community analysis, and case study of citation networks. Study of the models and behaviors of networked systems. Empirical studies of social, biological, technological and information networks. Exploring the concepts of small world effect, degree distribution, clustering, network correlations, node centrality, and community structure of networks. This will be followed by detailed case study of citation networks. Types of network: Social networks, Information networks, Technological networks, Biological networks, Citation Networks. Properties of network: Small world effect, transitivity and clustering, degree distribution, scale free networks, maximum degree; mixing patterns; degree correlations; community structures; node centrality.

πŸ“½ Watch

πŸ“²Channel: @ComplexNetworkAnalysis

#video #course
🎞 Introduction to Social Network Analysis [3/5]: Historical Applications

πŸ’₯Free recorded workshop by Martin Grandjean (UniversitΓ© de Lausanne) at the Conference HNR+ResHist2021 Conference "Historical Networks - RΓ©seaux Historiques - Historische Netzwerke co-organised by HNR and ResHist.

πŸ“½ Watch

πŸ“²Channel: @ComplexNetworkAnalysis

#video #workshop
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Complex Networks and Their Applications VIII
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2020_Review_on_Social_Network_Trust_With_Respect_To_Big_Data_Analytics.pdf
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πŸ“„Review on Social Network Trust With Respect To Big Data Analytics

πŸ“˜Conference: Fourth International Conference on Trends in Electronics and Informatics (ICOEI 2020)

πŸ—“Publish year: 2020

πŸ“ŽStudy paper

πŸ“±Channel: @ComplexNetworkAnalysis

#paper #review
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πŸ“• The Structure and Dynamics of Networks

🌐 Download the ebook

πŸ“²Channel: @ComplexNetworkAnalysis

#ebook
πŸ“„Centralities in complex networks

πŸ—“Publish year: 2019

πŸ“ŽStudy paper

πŸ“²Channel: @ComplexNetworkAnalysis
#paper
🎞 Emergence of echo chambers and polarization dynamics in social networks

πŸ’₯Echo chambers and opinion polarization, recently quantified in several sociopolitical contexts and across different social media, raise concerns on their potential impact on the spread of misinformation and on the openness of debates. Despite increasing efforts, the dynamics leading to the emergence of these phenomena stay unclear. In this talk, we will first review empirical evidence for the presence of echo chambers across social media platforms, by performing a comparative analysis among Gab, Facebook, Reddit, and Twitter. Then, we will present a simple modeling framework able to reproduce the observed opinion segregation in the social network. We consider networked agents characterized by heterogeneous activities and homophily, whose opinions can be reinforced by interactions with like-minded peers. We show that the transition between a global consensus and emerging polarized states in the network can be analytically characterized as a function of the social influence of the agents and the controversialness of the topic discussed. Finally, we consider a generalization to multiple opinions with respect to different topics. Inspired by skew coordinate systems recently proposed in natural language processing models, we frame this problem in a formalism in which opinions evolve in a multidimensional space where topics form a non-orthogonal basis. We show that this approach can reproduce the correlations between extreme opinions on different topics found in survey data.

πŸ“½ Watch

πŸ“±Channel: @ComplexNetworkAnalysis

#video #tutorial