Xing, 2023 - Google Patents
Identification of sexism on social mediaXing, 2023
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- 16155065473788870870
- Author
- Xing R
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[en] With the rapid advancement of communication technology, smartphone usage, and sophisticated algorithms, social media has become an integral and inseparable part of modern society. Consequently, the prevalence of sexist content on these platforms has …
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