mrsac7/Data-Mining-Project
Hate Speech Detection | Data Mining (CSE-362) Project | IIT (BHU) Varanasi | Odd Semester 2020-21
This project helps online community managers and social media platforms automatically identify and flag toxic or hateful comments. You provide it with text from user-generated content, and it classifies the text into categories like normal, obscene, threatening, insulting, toxic, severely toxic, or hate speech, indicating the likelihood for each. This helps improve user experience by enabling the removal of harmful content.
No commits in the last 6 months.
Use this if you need to automatically detect and categorize hate speech or toxic comments within user-submitted text on a website or platform.
Not ideal if you need to analyze sentiment for customer feedback or identify specific types of fraud, as its focus is solely on hate and toxicity detection.
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Last pushed
Nov 25, 2020
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