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Politics and Social media: The Political Blogosphere and the 2004 U.S. election: Divided They Blog Crystal: Analyzing Predictive Opinions on the Web Swapna Somasundaran swapna@cs.pitt.edu The Political Blogosphere and the 2004 U.S. election: Divided They Blog Link based Approach
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Politics and Social media:The Political Blogosphere and the 2004 U.S. election: Divided They BlogCrystal: Analyzing Predictive Opinions on the Web Swapna Somasundaran swapna@cs.pitt.edu
The Political Blogosphere and the 2004 U.S. election: Divided They Blog Link based Approach Studies linking patterns between blogs just before the presidential elections Crystal: Analyzing Predictive Opinions on the Web Language based approach Uses Linguistic expression of opinion to predict election results Politics and Social media
The Political Blogosphere and the 2004 U.S. election: Divided They Blog Lada A. Adamic, Natalie Glance
Motivation: Social media and Politics 2004: • Harnessing grass root support • Howard Dean’s campaign • Breaking stories first • Anti-Kerry video 2007:
Outline • Data collection • Analysis • Conclusions • Similar work
Data Web log directories _______ _______ ______ _____
Data Conservative blogs Web log directories _______ _______ ______ _____ Liberal blogs
Data Conservative blogs Web log directories _______ _______ ______ _____ blog Liberal blogs
Data Conservative blogs Web log directories _______ _______ ______ _____ blog Liberal blogs
Data Conservative blogs 1494 Blogs Web log directories _______ _______ ______ _____ blog Liberal blogs
Citation network blog
Citation network blog blog blog blog blog
Analysis: Citation network Conservative Blogs show a greater tendency to link
Analysis: Citation network 84% 82% 74% Conservative Blogs show a greater tendency to link 67%
Analysis: Posts Data : • Top 20 blogs from each each category • Extract posts from these for a span of 2.5 months. • 12470 left leaning, 10414 right leaning posts.
Analysis: Strength of community # of posts in which one blog cited another blog Remove links if fewer than 5 citations Remove links if fewer than 25 citations
Analysis: Strength of community Right-leaning blogs have denser structure of strong connections than the left
Analysis: Interaction with mainstream media Links to news articles
Analysis: Occurrences of names of political figures Left leaning bloggers spoke more about Republicans and vice versa People support their positions by criticizing those of the political figures they dislike
Conclusions • Clear division of blogosphere • Links • Topics and people • Conservative blogs are more likely to link.
Future work/ Extensions • Include more blogger types • Single/multi author distinction • Spread of topics due to network structure • …?
Some Similar Work • Political Hyperlinking in South Korea: Technical Indicators of Ideology and Content, Park et al. Sociological Research Online, Volume 10, Issue 3, 2005 • Weblog Campaigning in the German Bundestag Election 2005 , Albrecht et al., ,Social Science Computer Review , Volume 25 , Issue 4 ,November 2007 • Friends, foes, and fringe: norms and structure in political discussion networks, Kelly et al., International conference on Digital government research , 2006 • 1000 Little Election Campaigns:Utilization and Acceptance of Weblogs in the Run-up to the German General Election 2005 Roland Abold, ECPR Joint Session., Workshop 9: ‘Competitors to Parties in Electoral Politics, 2006
Some interesting links • http://www.politicaltrends.info/poltrends/poltrends.php • political trend tracker - tracks sentiments in political blogs, and reports daily statistics
Some interesting links: • Visualization of the blogosphere during French elections • http://www.observatoire-presidentielle.fr/?pageid=3 • http://www.fr2007.com/?page_id=2
Some Interesting Links: • Political wiki: • http://campaigns.wikia.com/wiki/Mission_Statement
Crystal: Analyzing Predictive Opinions on the Web Soo-min Kim and Eduard Hovy
Overview • Crystal: Election prediction system • Messages on election prediction website • Predictive opinions • Automatically create annotated data • Feature generalization, Ngram features • Supervised learning
Outline • Opinion types • Task definition • Data • Results, Insights
Judgment Opinions “I like it/ I dislike it” Positive/Negative Predictive Opinions “It is likely/ unlikely to happen” Belief about the future Likely/unlikely Opinions
Opinions • Judgment Opinions Sentiment Judgment, Evaluation, Feelings, Emotions “This is a good camera” “I hate this movie”
Opinions • Predictive Opinions Arguing (Wilson et. al, 2005, Somasundaran el al., 2007) • True (“Iran insists its nuclear program is for peaceful purposes”) • will happen (“This will definitely enhance the sales”) • should be done (“The papers have every right to print them and at this point the BBC has an obligation to print them.”) Speculation (Wilson et al, 2005) • Uncertainty about what may/ may not happen (“The president is likely to endorse the bill”)
Task • Predictive Opinion • (Party, valence) • Unit of prediction is message post on the discussion board
Data • www.electionprediction.org • Federal Election - 2004 • Calgary-east • Edmonton-Beaumont
Data • Gold standard: party logo used by author of the post • Positive examples • Negative examples?
Data If you pick a party, all mentions of it => “likely to win” If you pick a party, all mentions of other parties => “not likely to win”
LP=+1 No tag Con= -1 No tag
Analyzing Prediction: Feature generalization Similar to back-off idea
Experiments • Classify each sentence of the message • Restore party names for “Party” • Party with maximum valence is the party predicted to win by the message
Results Baselines: • FRQ: most frequently mentioned party in the message • MJR: most dominant predicted party • INC: current holder of the office • NGR: same as Crystal, only feature generalization step is skipped • JDG: same as Crystal, but features are only judgment opinion words