hateUS -- Analysis, impact of Social media use and Hate speech over University Student platforms: Case study, Problems, and Solutions
- URL: http://arxiv.org/abs/2410.20070v1
- Date: Sat, 26 Oct 2024 04:25:49 GMT
- Title: hateUS -- Analysis, impact of Social media use and Hate speech over University Student platforms: Case study, Problems, and Solutions
- Authors: Naresh Kshetri, Will Carter, Seth Kern, Richard Mensah, Bishwo Prakash Pokharel,
- Abstract summary: The case study is related to social media use and hate speech related to public debates over university students.
The use of NO phone times and NO phone zones is now popular in workplaces and family cultures.
The future challenges including health issues of social media use and hate speech has a serious impact on livelihood, freedom, and diverse communities of university students.
- Score: 0.0
- License:
- Abstract: The use of social media applications, hate speech engagement, and public debates among teenagers, primarily by university and college students, is growing day by day. The feelings of tremendous stress, anxiety, and depression via social media among our youths have a direct impact on their daily lives and personal workspace apart from delayed sleep, social media addictions, and memory loss. The use of NO phone times and NO phone zones is now popular in workplaces and family cultures. The use of hate speech, negotiations, and toxic words can lead to verbal abuse and cybercrime. Growing concern of mobile device security, cyberbullying, ransomware attacks, and mental health issues are another serious impact of social media among university students. The future challenges including health issues of social media use and hate speech has a serious impact on livelihood, freedom, and diverse communities of university students. Our case study is related to social media use and hate speech related to public debates over university students. We have presented the analysis and impact of social media and hate speech with several conclusions, cybercrimes, and components. The use of questionnaires for collecting primary data over university students help in the analysis of case study. The conclusion of case study and future scope of the research is extremely important to counter negative impacts.
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