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Regional Negative Bias in Word Embeddings Predicts Racial Animus--but only via Name Frequency | Stanford HAI

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Regional Negative Bias in Word Embeddings Predicts Racial Animus--but only via Name Frequency

Date
March 16, 2022
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Regional Negative Bias in Word Embeddings Predicts Racial Animus--but only via Name Frequency

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Authors
  • Austin van Loon
  • Salvatore Giorgi
  • Robb Willer
    Robb Willer
  • Johannes Eichstaedt
    Johannes Eichstaedt

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