AI Detects Toxic Social Media Comments
This is a Bangladesh news story, published by MSN, that relates primarily to East West University news.
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Text Toxicity ClassificationTechXplore
•Technology
Technology
New AI model detects toxic online comments with 87% accuracy
86% Informative
Computer scientists have developed a powerful machine learning model that can detect toxic social media comments with remarkable accuracy.
Researchers from East West University in Bangladesh and the University of South Australia say their model is an improvement on existing automated detection systems.
The team is now exploring partnerships with social media companies and online platforms to implement this technology.
VR Score
86
Informative language
86
Neutral language
43
Article tone
formal
Language
English
Language complexity
78
Offensive language
not offensive
Hate speech
not hateful
Attention-grabbing headline
not detected
Known propaganda techniques
not detected
Time-value
long-living
External references
5
Source diversity
4
Affiliate links
no affiliate links