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Big Data, Network Analysis

Big Data, Network Analysis. Week 13. How is date being used. Predict Presidential Election - Nate Silver – http://adage.com/article/campaign-trail/nate-silver-s-election-predictions-a-win-big-data-york-times/238182 /

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Big Data, Network Analysis

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  1. Big Data, Network Analysis Week 13

  2. How is date being used • Predict Presidential Election - Nate Silver – http://adage.com/article/campaign-trail/nate-silver-s-election-predictions-a-win-big-data-york-times/238182/ • Predict Pregnancy - Target – http://www.forbes.com/sites/kashmirhill/2012/02/16/how-target-figured-out-a-teen-girl-was-pregnant-before-her-father-did/

  3. Why Networks? • Why is the role of networks in CS, Info Science, Social Science, Physics, Economics, and Biology expanding? • More Data • Rise of the Web and Social Media • Shared vocabulary between (very different fields)

  4. Reasoning about Networks • How do we reason about networks? • Empirical: Look at large networks and see what we find • Mathematical Models: probabilistic, graph theory • Algorithms foranalyzing graphs • What do we hope to achieve from the networks? • Patterns and statistical properties of network data • Design principles and models • Understand why networks are organized the way they are (predict behaviors or networked systems)

  5. Why networks? • Network data is increasingly available: • Large on-line computing applications where data can naturally be represented as a network • Online communities: Facebook • Communications: Instant Messenger • News and Social Media: Blogging • Also in systems biology, health, medicine, …

  6. Networks: Rich Data a – Internet b – Citation network c – World Wide Web d – sexual network e – dating network

  7. Networks • Information networks: • World Wide Web: hyperlinks • Citation • Blog • Social networks: • Organizational • Communication • Collaboration • Sexual • Collaboration • Technological networks: • Power grid • Airline, road, river • Telephone • Internet • Autonomous systems

  8. What is Social Network Analysis? • Network analysis is the study of social relations among a set of actors. It is a field of study, not just a method. • “Social network analysis involves theorizing, model building and empirical research focused on uncovering the patterning of links among actors. It is concerned also with uncovering the antecedents and consequences of recurrent patterns.” (Linton Freeman)

  9. The Network Perspective People (nodes) Ties (edges)

  10. Ties in a social network • Directed or undirected • Simplex or multiplex • Valued or unvalued 7

  11. What is a Social Network? • A set of dyadic ties, all of the same type, among a set of actors • Actors can be persons, organizations, groups • A tie is an instance of a specific social relationship

  12. Network Relations • Among Individuals • Kinship • Role-based (friend of) • Cognitive/Perceptual (knows, aware of) • Affiliations • Affective (likes, trusts) • Communication • Among Organizations • Buy from / Sell to • Owns shares of • Joint ventures

  13. Key Perspectives in Social Network Analysis • Focus on relationships between actors rather than just the attributes of actors. • Interdependent viewrather than atomistic (individualist) view of social processes and effects. • Social structureaffects substantive outcomes (which is a philosophical departure from other traditions)

  14. Interdisciplinary Field of Study • Computer Science • Designing and understanding complex network structures • Mathematics, Physics • Methods, complex systems analysis • Social Science (Sociology, Social Psychology, Economics) • Theories and measurement of social networks, using networks to understand human behavior

  15. Multiple Levels of Analysis • Individual Level • How does individual position in a network affect various outcomes for the individual? • Systems Level • How does the network structure as a whole affect outcomes for various tasks?

  16. Network Data Collection Data obtained through manyeyes and graphed: http://www.esv.org/blog/2007/01/mapping.nt.social.networks • Common Types: • Survey • Interviews • Affiliation/membership records • Behavioral (e.g., observation of communication patterns) • Experiments

  17. Types of Network Data A B A B C School A One mode Two mode Whole network Egocentric

  18. Non-directed versus Directed Graphs A B A B C C

  19. Analyzing Social Networks A B D C Simple Adjacency Matrix

  20. Some Key Principles in Social Networks • Degree • The degree to which actors are connected directly to each other by cohesive bonds • Density • The proportion of direct ties in a network relative to the total number possible • Centrality • a group of metrics that aim to quantify the "importance" or "influence" (in a variety of senses) of a particular node (or group) within a network

  21. Degree in Social Networks

  22. Density in Social Networks Low Density High Density / Integrated “Radial” (Valente)

  23. Centrality in Social Networks Degree Centrality Closeness Centrality Betweeness Centrality

  24. Why all of this sudden interest? • The strength of the “Strength of Weak Ties” argument. • Granovetter (1973) • Argues that ‘weaker’ peripheral ties build heterogeneous networks, which in turn provide access to new and useful information. • Heterogeneity through weak-ties widely accepted as a “good thing” for communication • Access to jobs • Access to other opportunities • Helps distribute ideas, innovations

  25. Ted Talk • The hiddeninfluence of social networks • http://youtu.be/2U-tOghblfE

  26. Social Networks • http://www.youtube.com/watch?v=5etSid8G6EU • http://www.youtube.com/watch?v=PThAriHjk10&playnext=1&list=PL05CC28C66163B00D&feature=results_main

  27. Slides adapted from: • Jure Leskovec, Stanford CS224W: Social and Information Network Analysis ureLeskovec, Stanford CS224W: Social and Information Network Analysis • http://bit.ly/Y7fALp

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