Improved Stance Prediction in a User Similarity Feature Space

Predicting the stance of social media users on a topic can be challenging, particularly for users who never express explicit stances. Earlier work has shown that using users' historical or non-relevant tweets can be used to predict stance. We build on prior work by making use of users' interaction elements, such as retweeted accounts and mentioned hashtags, to compute the similarities between users and to classify new users in a user similarity feature space. We show that this approach significantly improves stance prediction on two datasets that differ in terms of language, topic, and cultural background.

[1]  Walid Magdy,et al.  Content and Network Dynamics Behind Egyptian Political Polarization on Twitter , 2014, CSCW.

[2]  Daniel DellaPosta,et al.  Why Do Liberals Drink Lattes?1 , 2015, American Journal of Sociology.

[3]  Ana-Maria Popescu,et al.  Democrats, republicans and starbucks afficionados: user classification in twitter , 2011, KDD.

[4]  Pablo Barberá Birds of the Same Feather Tweet Together: Bayesian Ideal Point Estimation Using Twitter Data , 2015, Political Analysis.

[5]  Venkata Rama Kiran Garimella,et al.  Secular vs. Islamist polarization in Egypt on Twitter , 2013, 2013 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining (ASONAM 2013).

[6]  Itai Himelboim,et al.  Birds of a Feather Tweet Together: Integrating Network and Content Analyses to Examine Cross-Ideology Exposure on Twitter , 2013, J. Comput. Mediat. Commun..

[7]  David Yarowsky,et al.  Classifying latent user attributes in twitter , 2010, SMUC '10.

[8]  Edward Y. Chang,et al.  Adaptive Feature-Space Conformal Transformation for Imbalanced-Data Learning , 2003, ICML.

[9]  Long Jiang,et al.  User-level sentiment analysis incorporating social networks , 2011, KDD.

[10]  Harry Shum,et al.  Graph-based collective classification for tweets , 2012, CIKM.

[11]  Ana-Maria Popescu,et al.  A Machine Learning Approach to Twitter User Classification , 2011, ICWSM.

[12]  Venkata Rama Kiran Garimella Quantifying and Bursting the Online Filter Bubble , 2017, WSDM.

[13]  Waleed Ammar,et al.  Improved Transliteration Mining Using Graph Reinforcement , 2011, EMNLP.

[14]  Nadir Durrani,et al.  Farasa: A Fast and Furious Segmenter for Arabic , 2016, NAACL.

[15]  Walid Magdy,et al.  #FailedRevolutions: Using Twitter to study the antecedents of ISIS support , 2015, First Monday.

[16]  Mung Chiang,et al.  Quantifying Political Leaning from Tweets and Retweets , 2013, ICWSM.

[17]  Thorsten Joachims,et al.  Learning to classify text using support vector machines - methods, theory and algorithms , 2002, The Kluwer international series in engineering and computer science.

[18]  Saif Mohammad,et al.  SemEval-2016 Task 6: Detecting Stance in Tweets , 2016, *SEMEVAL.

[19]  Timothy Baldwin,et al.  #ISISisNotIslam or #DeportAllMuslims?: predicting unspoken views , 2016, WebSci.