Social network analysis

Social network analysis

Social network analysis (SNA) is the process of investigating social structures through the use of networks and graph theory. It characterizes networked structures in terms of nodes (individual actors, people, or things within the network) and the ties, edges, or links (relationships or interactions) that connect them. Examples of social structures commonly visualized through social network analysis include social media networks, memes spread, information circulation, friendship and acquaintance networks, business networks, knowledge networks, difficult working relationships, social networks, collaboration graphs, kinship, disease transmission, and sexual relationships. These networks are often visualized through sociograms in which nodes are represented as points and ties are represented as lines. These visualizations provide a means of qualitatively assessing networks by varying the visual representation of their nodes and edges to reflect attributes of interest. Social network analysis has emerged as a key technique in modern sociology. It has also gained significant popularity in the following - anthropology, biology, demography, communication studies, economics, geography, history, information science, organizational studies, political science, public health, social psychology, development studies, sociolinguistics, and computer science and is now commonly available as a consumer tool (see the list of SNA software). The advantages of SNA are twofold. Firstly, it can process a large amount of relational data and describe the overall relational network structure. tem and parameter selection to confirm the influential nodes in the network, such as in-degree and out-degree centrality. SNA context and choose which parameters to define the “center” according to the characteristics of the network. Through analyzing nodes, clusters and relations, the communication structure and position of individuals can be clearly described. (Wikipedia).

Social network analysis
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Network Analysis. Course introduction.

Introduction to the Social Network Analysis course.

From playlist Structural Analysis and Visualization of Networks.

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Welcome - Intro to Algorithms

This video is part of an online course, Intro to Algorithms. Check out the course here: https://www.udacity.com/course/cs215.

From playlist Introduction to Algorithms

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Social network analysis - Introduction to structural thinking: Dr Bernie Hogan, University of Oxford

Social networks are a means to understand social structures. This has become increasingly relevant with the shift towards mediated interaction. Now we can observe and often analyse links at a scale that far outpaces what was possible only decades ago. While this prompts new methodologies,

From playlist Data science classes

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24C3: I know who you clicked last summer

Speaker: Svenja Schröder A swiss army knife for automatic social investigation This talk introduces some techniques of social network analysis and graph theory. It aims at using simple approaches for getting interesting facts about networks. I will use the data of a popular community t

From playlist 24C3: Full steam ahead

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Network Analysis. Lecture 6. Link Analysis

Directed graphs. PageRank, Perron-Frobenius theorem and algorithm convergence. Power iterations. Hubs and Authorites. HITS algorithm. Lecture slides: http://www.leonidzhukov.net/hse/2015/networks/lectures/lecture6.pdf

From playlist Structural Analysis and Visualization of Networks.

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Network Analysis. Lecture 16. Social learning

Social learning in networks. DeGroot model. Reaching consensus. Influence vector. Social influence networks. Lecture slides: http://www.leonidzhukov.net/hse/2015/networks/lectures/lecture16.pdf

From playlist Structural Analysis and Visualization of Networks.

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Social Network Analysis

Mathematica provides state-of-the-art functionality for analyzing and synthesizing graphs and networks. One application of the new functionality is social network analysis. In this talk from the Wolfram Technology Conference 2011, Charles Pooh, a Senior Kernel Developer at Wolfram Research

From playlist Wolfram Technology Conference 2011

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NIPS 2011 Big Learning - Algorithms, Systems, & Tools Workshop: Towards Human Behavior...

Big Learning Workshop: Algorithms, Systems, and Tools for Learning at Scale at NIPS 2011 Invited Talk: Towards Human Behavior Understanding from Pervasive Data: Opportunities and Challenges Ahead by Nuria Oliver Nuria Oliver is currently the Scientific Director for the Multimedia, HCI

From playlist NIPS 2011 Big Learning: Algorithms, System & Tools Workshop

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Mathematica Experts Live: Social Networks and Data Science

A panel of Mathematica experts discuss and demonstrate some of the new features of Mathematica 9 in the areas of social network analysis and data science. For more information about Mathematica, please visit: http://www.wolfram.com/mathematica

From playlist Mathematica Experts Live: New in Mathematica 9

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SICSS 2018 - Text Networks (Day 3. June 20, 2018)

Chris Bail talks about text networks at the 2018 Summer Institute in Computational Social Science at Duke University. Slides and materials available here: https://compsocialscience.github.io/summer-institute/2018/teaching-learning-materials

From playlist All Videos

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Tao Zou - Network Influence Analysis

Dr Tao Zou (ANU) presents "Network Influence Analysis”, 20 August 2020. Seminar organised by the Australian National University.

From playlist Statistics Across Campuses

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SICSS 2017 - Ngram Networks (Day 3. June 21, 2017)

The first Summer Institute in Computational Social Science was held at Princeton University from June 18 to July 1, 2017, sponsored by the Russell Sage Foundation. For more details, please visit https://compsocialscience.github.io/summer-institute/2017/

From playlist All Videos

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Black Hat USA 2010: Social Networking Special OpsOps: Extending Data Visualization 1/5

Speaker: Chris Sumner If you're ever in a position when you need to pwn criminals via social networks or see where Tony Hawk likes to hide skateboards around the world, this talk is for you. The talk is delivered in two parts, both of which are intended to shine a fun light on visual soc

From playlist Black Hat USA 2010

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SICSS 2017 - Guest Lecture by Sandra Gonzalez-Bailon (Day 4. June 22, 2017)

The first Summer Institute in Computational Social Science was held at Princeton University from June 18 to July 1, 2017, sponsored by the Russell Sage Foundation. For more details, please visit https://compsocialscience.github.io/summer-institute/2017/

From playlist Guest Speakers

Related pages

Eigenvector centrality | Betweenness centrality | Alpha centrality | Structural cohesion | Social network | Sociogram | Coefficient | Collaboration graph | Dynamic network analysis | Social network analysis software | Centrality | Network theory | Blockmodeling | Social media analytics | Complex network | Douglas R. White | Social media intelligence | Reliability (statistics) | Metcalfe's law | Structural holes | Social media mining | Clustering coefficient | Graph theory | Mathematical sociology | Link prediction | Closeness centrality | Cycle (graph theory) | Assortativity | Network science | Attention inequality | Network-based diffusion analysis | Individual mobility | Triadic closure | Bridge (graph theory) | Friendship paradox | Signed network | Signed graph | Net-map toolbox | Dense graph | Algorithm | Multidimensional scaling | Demography | Data mining