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Merging public health and automated approaches to address online hate speech.

Tina Nguyen
Published in: AI and ethics (2023)
The COVID-19 pandemic sparked a rise in misinformation from various media sources, which contributed to the heightened severity of hate speech. The upsurgence of hate speech online has devastatingly translated to real-life hate crimes, which saw an increase of 32% in 2020 in the United States alone (U.S. Department of Justice 2022). In this paper, I explore the current effects of hate speech and why hate speech should be widely recognized as a public health issue. I also discuss current artificial intelligence (AI) and machine learning (ML) strategies to mitigate hate speech along with the ethical concerns with using these technologies. Future considerations to improve AI/ML are also examined. Through analyzing these two contrasting methodologies (public health versus AI/ML), I argue that these two approaches applied by themselves are not efficient or sustainable. Therefore, I propose a third approach that combines both AI/ML and public health. With this proposed approach, the reactive side of AI/ML and the preventative nature of public health measures are united to develop an effective manner of addressing hate speech.
Keyphrases
  • public health
  • artificial intelligence
  • machine learning
  • deep learning
  • big data
  • hearing loss
  • social media
  • global health
  • health information
  • healthcare
  • tertiary care
  • drinking water