Log In
Or create an account -> 
Imperial Library
  • Home
  • About
  • News
  • Upload
  • Forum
  • Help
  • Login/SignUp

Index
Social Network Analysis for Startups SPECIAL OFFER: Upgrade this ebook with O’Reilly A Note Regarding Supplemental Files Preface
Prerequisites Open-Source Tools Conventions Used in This Book Using Code Examples Safari® Books Online How to Contact Us Content Updates
March 16, 2012
Thanks
1. Introduction
Analyzing Relationships to Understand People and Groups
Binary and Valued Relationships Symmetric and Asymmetric Relationships Multimode Relationships
From Relationships to Networks—More Than Meets the Eye Social Networks vs. Link Analysis The Power of Informal Networks Terrorists and Revolutionaries: The Power of Social Networks
Social Networks in Prison Informal Networks in Terrorist Cells The Revolution Will Be Tweeted
Social Media and Social Networks Egyptian Revolution and Twitter
2. Graph Theory—A Quick Introduction
What Is a Graph?
Adjacency Matrices Edge-Lists and Adjacency Lists 7 Bridges of Königsberg
Graph Traversals and Distances
Depth-First Traversal
Implementation DFS with NetworkX
Breadth-First Traversal
Algorithm BFS with NetworkX
Paths and Walks Dijkstra’s Algorithm
Graph Distance
Graph Diameter
Why This Matters 6 Degrees of Separation is a Myth! Small World Networks
3. Centrality, Power, and Bottlenecks
Sample Data: The Russians are Coming!
Get Oriented in Python and NetworkX Read Nodes and Edges from LiveJournal Snowball Sampling Saving and Loading a Sample Dataset from a File
Centrality
Who Is More Important in this Network? Find the “Celebrities”
Degree centrality in the LiveJournal network
Find the Gossipmongers Find the Communication Bottlenecks and/or Community Bridges Putting It Together Who Is a “Gray Cardinal?”
In practice
Klout Score PageRank—How Google Measures Centrality
Simplified PageRank algorithm
What Can’t Centrality Metrics Tell Us?
4. Cliques, Clusters and Components
Components and Subgraphs
Analyzing Components with Python Islands in the Net
Subgraphs—Ego Networks
Extracting and Visualizing Ego Networks with Python
Triads
Fraternity Study—Tie Stability and Triads Triads and Terrorists The “Forbidden Triad” and Structural Holes Structural Holes and Boundary Spanning Triads in Politics Directed Triads Analyzing Triads in Real Networks Real Data
Cliques
Detecting Cliques
Hierarchical Clustering
The Algorithm Clustering Cities Preparing Data and Clustering Block Models
Triads, Network Density, and Conflict
5. 2-Mode Networks
Does Campaign Finance Influence Elections? Theory of 2-Mode Networks
Affiliation Networks Attribute Networks A Little Math 2-Mode Networks in Practice PAC Networks Candidate Networks
Expanding Multimode Networks
Exercise
6. Going Viral! Information Diffusion
Anatomy of a Viral Video
What Did Facebook Do Right? How Do You Estimate Critical Mass? Wikinomics of Critical Mass Content is (Still) King
Heterogenous Preferences
How Does Information Shape Networks (and Vice Versa)?
Birds of a Feather? Homophily vs. Curiosity
Boundary Spanners
Weak Ties Dunbar Number and Weak Ties
A Simple Dynamic Model in Python
Influencers in the Midst Exercises for the Reader
Coevolution of Networks and Information
Exercises for the Reader Why Model Networks?
7. Graph Data in the Real World
Medium Data: The Tradition Big Data: The Future, Starting Today “Small Data”—Flat File Representations
EdgeList Files .net Format GML, GraphML, and other XML Formats Ancient Binary Format—##h Files
“Medium Data”: Database Representation
What are Cursors? What are Transactions? Names Nodes as Data, Attributes as ? The Class Functions and Decorators
Decorator notation
The Adaptor
Working with 2-Mode Data
Exercises for the Reader
Social Networks and Big Data
NoSQL Structural Realities
Plain text is king The freedom to store
Computational Complexities Big Data is Big
Big Data at Work
What Are We Distributing? Hadoop, S3, and MapReduce Hive SQL is Still Our Friend
A. Data Collection
A Note on the Ethics of Data Collection The Old-Fashioned Way Mining Server Logs Mining Social Media Sites
Business and Investments Politics, Elections, and Courts Blogosphere and Social Bookmarking
Twitter Data Collection Facebook
Private Ego-Networks Facebook Social Graph API
B. Installing Software
Why (We Love) Python? Exploratory Programming Python IPython NetworkX matplotlib
pylab: matplotlib with IPython
About the Authors SPECIAL OFFER: Upgrade this ebook with O’Reilly Copyright
  • ← Prev
  • Back
  • Next →
  • ← Prev
  • Back
  • Next →

Chief Librarian: Las Zenow <zenow@riseup.net>
Fork the source code from gitlab
.

This is a mirror of the Tor onion service:
http://kx5thpx2olielkihfyo4jgjqfb7zx7wxr3sd4xzt26ochei4m6f7tayd.onion