Pricing a Protest: Forecasting the Dynamics of Civil Unrest Activity in Social Media

Abstract

Online social media activity can often be a precursor to disruptive events such as protests, strikes, and occupy movements. We have observed that such civil unrest can galvanize supporters through social networks and help recruit activists to their cause. Understanding the dynamics of social network cascades and extrapolating their future growth will enable an analyst to detect or forecast major societal events. Existing work has primarily used structural and temporal properties of cascades to predict their future behavior. But factors like societal pressure, alignment of individual interests with broader causes, and perception of expected benefits also affect protest participation in social media. Here we develop an analysis framework using a differential game theoretic approach to characterize the cost of participating in a cascade, and demonstrate how we can combine such cost features with classical properties to forecast the future behavior of cascades. Using data from Twitter, we illustrate the effectiveness of our models on the Brazilian Spring and Venezuelan protests that occurred in June 2013 and November 2013, respectively. We demonstrate how our framework captures both qualitative and quantitative aspects of how these uprisings manifest through the lens of tweet volume on Twitter social media.

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Document Details

Document Type
Technical Report
Publication Date
Oct 06, 2015
Accession Number
AD1067233

Entities

People

  • Brian J. Goode
  • Michael Roan
  • Naren Ramakrishnan
  • Siddharth Krishnan

Organizations

  • Virginia Tech

Tags

Communities of Interest

  • Autonomy
  • Energy and Power Technologies

DTIC Thesaurus Topics

  • Algorithms
  • Computer Programs
  • Computer Science
  • Costs
  • Data Mining
  • Data Sets
  • Equations
  • Game Theory
  • Machine Learning
  • Media
  • New York
  • Online Communications
  • Social Media
  • Social Networking Services
  • Social Networks
  • Supervised Machine Learning
  • United States

Readers

  • Political Violence and Terrorism Studies.
  • Systems Analysis and Design
  • Theoretical Analysis.