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πŸ“„Complex Networks: ErdΕ‘s–RΓ©nyi Model, Centralities, Random Regular Graph

πŸ’₯
Complex Networks are traditionally studied in the context of Graph theory, and identify important nodes and edges with the notions of centrality.

πŸ’₯free online site to visualize, test and see different metrics in complex network
.

πŸ“Ž Link

πŸ“²Channel: @ComplexNetworkAnalysis
#paper #Centralities
🎞 Conducting Network Analysis in R

πŸ’₯Free recorded webinar
πŸ”ΉThis webinar, which is sponsored by the AED Early Career Special Interest Group (SIG), will provide guidance on how network analysis is a statistical approach that allows for the examination of how components of a network are related to one another.In this webinar, Dr. Cheri Levinson and her advanced graduate student Ms. Irina Vanzhula will provide a brief overview on network theory and analysis. They will then demonstrate how to conduct network analysis in R using sample data.

πŸ“½ Watch

πŸ“±Channel: @ComplexNetworkAnalysis

#video #R
πŸ“£ Graph Structure and Complex Network Analysis

πŸ’₯INTERNATIONAL CENTER FOR PURE AND ACCURATE MATHEMATICS

πŸ’₯Understanding the graph structure is a key point in deriving efficient algorithms in large networks. In this school, we will cover theoretical aspects of graph structure analysis as well as applications on complex network studies with 9 lectures in two main axes:

1) Exploiting graph structure to efficiently solve combinatorial problems
2) Extending graph structural analysis to complex network studies

πŸ“Œ SIRINCE , Turkey
πŸ’¬ Language: English
πŸ—“ 04/06/2023 to 16/06/2023
πŸ•– Deadline : February 21, 2023

πŸ‘¨β€πŸ« Scientific committee:
Tınaz Eki̇m, Bertrand Jouve, Pascale KUNTZ, Saieed Akbari, Pınar Heggernes, Marc Demange

πŸ“ŽLink

ℹ️ Register + more information


πŸ“²Channel: @ComplexNetworkAnalysis
#CIMPA_schools
πŸ‘1
🎞 Think Graph Neural Networks (GNN) are hard to understand? Try this two part series..

πŸ’₯Free recorded tutorial by Avkash Chauhan.

πŸ’₯This tutorial is part one of a two parts GNN series. Graphs helps us understand and visualize the relationship and connection information in a natural and close to human behavior. Graph Neural networks are solving various machine learning problems where CNN or convolutional neural networks can not be applied. Then You will learn GNN technical details along with hands on exercise using Python programming along with NetworkX, PyG (pytorch_geometric) , matplotlib libraries.

πŸ“½ Watch: part1 part2

πŸ’» Code

πŸ“œ Slides

πŸ“²Channel: @ComplexNetworkAnalysis

#video #tutorial #Graph #GNN #Python #NetworkX #PyG
πŸ“•Introduction to R for Data Science: A LISA 2020 Guidebook

πŸ“Authors: Jacob D. Holster

πŸ’₯This guidebook aims to provide readers an opportunity to make a start towards learning R for a variety of data science tasks, include (a) data cleaning and preparation, (b) statistical analysis, (c) data visualization, (d) natural language processing, (e) network analysis, and (f) Structural Equation Modeling to name a few. In Chapters 1 and 2 we invite readers to install R and RStudio and to start manipulating data for analysis. Chapter 3 and Chapter 4 include introductory exercises to teach data visualization and statistical analysis in R. In Chapter 5 and beyond, you will explore basic analytic concepts (e.g., correlation and regression) and more advanced approaches to data modeling through the lenses of Structural Equation Modeling, Network Analysis, and Text Analysis.

πŸ“šFree online guidebook

πŸ“– Study

πŸ’» Code

πŸ“²Channel: @ComplexNetworkAnalysis

#book #R #code #video
2020_Social_network_analysis_of_open_source_software_A_review.pdf
715.7 KB
πŸ“„Social network analysis of open source software: A review and categorisation

πŸ“˜
Journal: INFORMATION AND SOFTWARE TECHNOLOGY (I.F=3.862)
πŸ—“
Publish year: 2020

πŸ“ŽStudy paper

πŸ“±Channel: @ComplexNetworkAnalysis
#paper #software #categorisation #review
πŸ“„Using Theory to Guide Exploratory Network Analyses

πŸ“˜Journal: Faculty & Staff Research and Creative Activity
πŸ—“Publish year: 2022

πŸ“ŽStudy paper

πŸ“²Channel: @ComplexNetworkAnalysis
#paper #Graph
πŸ“„Blockchain Network Analysis: A Comparative Study of Decentralized Banks?

πŸ—“Publish year: 2022

πŸ“ŽStudy paper

πŸ“±Channel: @ComplexNetworkAnalysis
#paper #Blockchain #Banks #review
πŸ‘1
Social Network Analysis.pdf
2 MB
πŸ“•Social Network Analysis

πŸ“Authors: StΓ©phane TuffΓ©ry

πŸ’₯Social networks are at the heart of big data, with their huge quantities of data of all kinds, text, images, video, and audio. Graphs are used to represent social networks in particular and all networks in general. In many applications of social networks, it is important to identify the most influential individuals. In a graph, the importance of a vertex can be expressed in several ways, the main ones being the degree centrality, the closeness centrality, the betweenness centrality, and prestige. A clique is a graph in which all vertices are connected and a quasi-clique is a group of vertices that are highly connected. A community is a subgraph that is both a quasi-clique and a quasi-connected component.

πŸ—“
publish year: 2022
πŸ“–
Study book

πŸ“²Channel: @ComplexNetworkAnalysis

#book #R #code
πŸ“„Survey of Attack Graph Analysis Methods from the Perspective of Data and Knowledge Processing

πŸ“˜Journal: Security and communication networks (IF= 1.288)
πŸ—“Publish year: 2019

πŸ“ŽStudy paper

πŸ“²Channel: @ComplexNetworkAnalysis
#paper #Graph #Survey
πŸ“„Graph Learning: A Survey

πŸ“˜Journal: IEEE Transactions on Artificial Intelligence
πŸ—“Publish year: 2021

πŸ“ŽStudy paper

πŸ“²Channel: @ComplexNetworkAnalysis
#paper #Graph #Survey
2016-A Taxonomy and Survey of Dynamic Graph Visualization.pdf
3.2 MB
πŸ“„A Taxonomy and Survey of Dynamic Graph Visualization

πŸ“˜Journal: Computer Graphics Forum (I.F= 1.6)
πŸ—“Publish year: 2016

πŸ“ŽStudy paper

πŸ“²Channel: @ComplexNetworkAnalysis
#paper #Graph #Survey #Visualization
πŸ‘1
πŸ“„Time Series Forecasting Based on Complex Network Analysis

πŸ“˜Journal: IEEE Access (I.F= 4.809)
πŸ—“Publish year: 2019

πŸ“ŽStudy paper

πŸ“²Channel: @ComplexNetworkAnalysis
#paper #Forecasting #Time_Series
πŸ‘1
2016-Complex network analysis of time series.pdf
948 KB
πŸ“„Complex network analysis of time series

πŸ“˜Journal: EPL (I.F= 1.947)
πŸ—“Publish year: 2016

πŸ“ŽStudy paper

πŸ“²Channel: @ComplexNetworkAnalysis
#paper #Time_Series
πŸ“„Using social network analysis to examine alcohol use among adults: A systematic review

πŸ“˜
Journal: PLOS ONE (I.F=3.752)
πŸ—“
Publish year: 2019

πŸ“ŽStudy paper
πŸ“±Channel: @ComplexNetworkAnalysis
#paper #examine #alcohol #adults #review
πŸ“„Graph analysis to survey data: a first approximation

πŸ“˜Journal: Complex Systems in Science (I.F=0.36)
πŸ—“Publish year: 2015

πŸ“ŽStudy paper

πŸ“²Channel: @ComplexNetworkAnalysis
#paper #Graph #survey
🎞 A Tutorial Review of Functional Connectivity Analysis Methods and Their Interpretational Pitfalls

πŸ’₯Free recorded tutorial by Andre M. Bastos
πŸ”ΉThis tutorial will review and summarize current analysis methods used in the field of invasive and non-invasive electrophysiology to study the dynamic connections between neuronal populations. First, I will review metrics for functional connectivity, including coherence, phase synchronization, phase slope index, and Granger causality, with the specific aim to provide an intuition for how these metrics work, as well as their quantitative definition Next, I will highlight a number of interpretational caveats and common pitfalls that can arise when performing functional connectivity analysis, including the common reference problem, the signal to noise ratio problem, the volume conduction problem, the common input problem, and the sample size bias problem. These pitfalls will be illustrated by presenting a series of MATLAB-scripts, which can be executed by the tutorial participants to simulate each of these potential problems. I will discuss how some of these issues can be addressed using current methods

πŸ“½Watch

πŸ“±Channel: @ComplexNetworkAnalysis

#video #Tutorial #Connectivity #review
πŸ“„Social network analysis in operations and supply chain management: a review and revised research agenda

πŸ“˜
Journal: INTERNATIONAL JOURNAL OF OPERATIONS & PRODUCTION MANAGEMENT (I.F=9.36)
πŸ—“
Publish year: 2020

πŸ“ŽStudy paper

πŸ“±Channel: @ComplexNetworkAnalysis
#paper #supply #chain_management #agenda #review