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Effectiveness of Supervised Classification Models for Hate Speech on Twitter
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  • Kunal Srivastava ,
  • Ryan Tabrizi ,
  • Ayaan Rahim ,
  • Lauryn Nakamitsu
Kunal Srivastava
Bellevue High School

Corresponding Author:[email protected]

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Ryan Tabrizi
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Ayaan Rahim
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Lauryn Nakamitsu
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Abstract

Abstract The ceaseless connectivity imposed by the internet has made many vulnerable to offensive comments, be it their physical appearance, political beliefs, or religion. Some define hate speech as any kind of personal attack on one's identity or beliefs. Of the many sites that grant the ability to spread such offensive speech, Twitter has arguably become the primary medium for individuals and groups to spread these hurtful comments. Such comments typically fail to be detected by Twitter's anti-hate system and can linger online for hours before finally being taken down. Through sentiment analysis, this algorithm is able to distinguish hate speech effectively through the classification of sentiment.