haku: @keyword natural language processing / yhteensä: 16
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Tekijä:Blegean, Julien
Työn nimi:Twitter the Rioter : Analyzing roles through a protest on social media. What was your part during the 2014 Ferguson riots?
Julkaisutyyppi:Diplomityö
Julkaisuvuosi:2015
Sivut:68+0      Kieli:   eng
Koulu/Laitos/Osasto:Perustieteiden korkeakoulu
Oppiaine:   (-)
Valvoja:Gionis, Aristides
Ohjaaja:Mathioudakis, Michael
Elektroninen julkaisu: http://urn.fi/URN:NBN:fi:aalto-201506303586
Sijainti:  
Avainsanat:social network analysis
graph analysis
natural language processing
twitter
Tiivistelmä (eng):We introduce a framework for analyzing roles of users during a riot.
The dataset contains messages from Twitter during the 2014 US Ferguson protests.
First, after some preprocessing one the data, we extract topics from a riot by comparing two techniques : k-means and Latent Dirichlet Allocation.
Secondly, we focus on the content of the tweets.
We train and test a Naive Bayes classifier to predict if a tweet is either supportive or informative about the riot.
We also study the medias shared by users in order to improve our classifier and in the end we define and compute user polarity score.
Then, we perform graph analysis on the hashtags and users and we visualize these networks through examples.
We also define and compute user influence score with degree centrality and Page Rank.
Finally, we define the role of a user during a riot (or several) as being the feature vector of its polarity and influence scores for each topic.
We perform dimension reduction with PCA and t-SNE for visualization purpose and neighbors research.
Through experiments, we show how users with the same job (for example journalists or activists) are grouped together.
ED:2015-08-16
INSSI tietueen numero: 52002
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