Fine margin between free speech and hate speech at new media: A Case-Study on Twitter

نویسندگان

چکیده

This research aimed to examine the dimensions and contents of hate speech shared on
 official Twitter accounts clubs in fiercely competitive derbies world
 football.
 In scope research, competitors with intense competition world football
 competitions highest rate were determined, the
 reflections matches played by these each other 2019 were
 examined on clubs. Clubs under examination Turkish Super League Fenerbahce Galatasaray, Manchester United and
 Liverpool from England, Inter Milan Italy, Barcelona Real Madrid from
 Spain, Schalke 04 Borussia Dortmund Germany, Celtic Rangers Scotland, Boca Juniors Argentina River Plate teams' accounts
 investigated.When total 18249 tweets obtained results
 examined, intensity sharing profanity-insulting content did not differ
 according countries, but there differences when people or teams in
 which posts directly considered. While insulting profanity messages
 towards opposing team came fore League, Spain La
 Liga, Argentine Italy Serie A Scottish Premier messages of
 fans this category English German Bundesliga
 because directed their teams. humiliating or
 othering opponent, was at top, results this
 league similar Spanish La Liga.

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ژورنال

عنوان ژورنال: Akdeniz Spor Bilimleri dergisi

سال: 2022

ISSN: ['2667-5463']

DOI: https://doi.org/10.38021/asbid.1202119