Characterization of Football Supporters from Twitter Conversations

Football (aka Soccer) is the most popular sport in the world. The popularity of the sport leads to several stories (some perhaps anecdotal) about supporters behaviors and to the emergence of rivalries such as the famous Barcelona-Real Madrid (in Spain). Little however has been done to characterize/profile online users' behaviors as football supporters and use them as an aggregate measure to club characterization. Today, the availability of data enable us to understand at a much greater scale if rivalries exist and if there are signatures that can be used to characterize supporting behavior. In this paper we use techniques from Data Science to characterize football supporters according to their activity on Twitter and to characterize clubs according to the behavior of their supporters. We show that it is possible to: (i) rank football clubs by their popularity and fans' dislike, (ii) identify the rivalries that exist between clubs and their supporters, and (iii) find specific signatures that repeat themselves across different clubs and in different countries. The results are evaluated on a large dataset of tweets relevant to major football leagues in Brazil and in the United Kingdom.

[1]  K. Gwinner,et al.  A model of fan identification: antecedents and sponsorship outcomes , 2003 .

[2]  Melissa Goertzen,et al.  Wired Academia: Why Social Science Scholars Are Using Social Media , 2013, 2013 46th Hawaii International Conference on System Sciences.

[3]  Ann Lehman,et al.  JMP for Basic Univariate and Multivariate Statistics: Methods for Researchers and Social Scientists, Second Edition , 2013 .

[4]  Des Laffey,et al.  Is Twitter for the Birds? , 2011 .

[5]  Ahmad Rahmati,et al.  SportSense: Real-Time Detection of NFL Game Events from Twitter , 2012, ArXiv.

[6]  D. Watts,et al.  An Experimental Study of Search in Global Social Networks , 2003, Science.

[7]  L. van Zoonen,et al.  Supporters or Customers? Fandom, Marketing and the Political Economy of Dutch Football , 2006 .

[8]  J. Fowler,et al.  Rapid assessment of disaster damage using social media activity , 2016, Science Advances.

[9]  Hosung Park,et al.  What is Twitter, a social network or a news media? , 2010, WWW '10.

[10]  T. Kailath The Divergence and Bhattacharyya Distance Measures in Signal Selection , 1967 .

[11]  John Price,et al.  Changing the game? The impact of Twitter on relationships between football clubs, supporters and the sports media , 2013 .

[12]  Mohammad Ali Abbasi,et al.  TweetTracker: An Analysis Tool for Humanitarian and Disaster Relief , 2011, ICWSM.

[13]  Isabell M. Welpe,et al.  Predicting Elections with Twitter: What 140 Characters Reveal about Political Sentiment , 2010, ICWSM.

[14]  Jehan Wickramasuriya,et al.  Analyzing Twitter for Social TV : Sentiment Extraction for Sports , 2011 .

[15]  Johan Bollen,et al.  Twitter mood predicts the stock market , 2010, J. Comput. Sci..

[16]  Roxane Coche Promoting women’s soccer through social media: how the US federation used Twitter for the 2011 World Cup , 2016 .

[17]  Cassidy R. Sugimoto,et al.  Do Altmetrics Work? Twitter and Ten Other Social Web Services , 2013, PloS one.

[18]  R. Menezes,et al.  Football Conversations: What Twitter Reveals about the 2014 World Cup , 2015 .