Introduction to NodeXL Like MSPaint™ for graphs. — the Community.

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Presentation transcript:

Introduction to NodeXL Like MSPaint™ for graphs. — the Community

NodeXL Free/Open Network Analysis add-in for Excel 2007/2010

Who Uses Network Analysis

Social media , Blogs, YouTube… Facebook, Twitter, LinkedIn… Publications Scientific & Legal citations Science Predator-prey networks Biological pathways Epidemic contagion Business Corporate boards Sales networks International trade

Vertex (Node) Labels & Attribute values Edge (Link, Tie) Directed/Undirected Labels & Attribute values Cohesive Sub-Groups Components Clique Cluster E D F A C B H G I J L K M Network Definitions & Visualization

Vertex (Node) Labels & Attribute values Edge (Link, Tie) Directed/Undirected Labels & Attribute values Cohesive Sub-Groups Components Clique Cluster E D F A C B H G I J L K M

Many Structures Are Possible

Descriptive Network Measures Individual – Centrality Degree (In, Out, Total) Betweenness Closeness Eigenvector Network characteristics – Density – Hierarchy – Diameter

NodeXL creates a list of “vertices” from imported social media edges NodeXL displays subgraph images along with network metadata

NodeXL “Autofill columns” simplifies mapping data attributes to display attributes

NodeXL enables filtering of networks

Copyright © 2011, Elsevier Inc. All rights Reserved FIGURE 7.11 Chapter 7 Lobbying Coalition network connecting organizations (vertices) that have jointly filed comments on U.S. Federal Communications Commission policies (edges). Vertex size represents number of filings and color represents eigenvector centrality (pink higher). Darker edges connect organizations with many joint filings. Vertices were originally positioned using Fruchterman- Reingold and handpositioned to respect clusters identified by NodeXL’s Find Clusters algorithm.

Diane has high degree Heather has high betweenness Example A minimal network can illustrate the ways different locations have different values for centrality and degree

Elizabeth Schwarz, UCRiverside,