Tackling racial bias in automated online hate detection: Towards fair and accurate detection of hateful users with geometric deep learning
Online hate is a growing concern on many social media platforms, making them unwelcoming and unsafe. To combat this, technology companies are increasingly developing techniques to automatically identify and sanction hateful users. However, accurate detection of such users remains a challenge due to...
Main Authors: | Ahmed, Z, Vidgen, B, Hale, SA |
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Format: | Journal article |
Language: | English |
Published: |
Springer Nature
2022
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