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First published online February 2, 2024

Resisting Dehumanization in the Age of “AI”

Abstract

The production and promotion of “AI” technology involves dehumanization on many fronts. I explore these processes of dehumanization and the role that cognitive science can play by bringing a richer picture of human cognition to the discourse.

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Published In

Article first published online: February 2, 2024
Issue published: April 2024

Keywords

  1. artificial intelligence
  2. cognitive science
  3. dehumanization
  4. interdisciplinarity

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© The Author(s) 2024.
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Authors

Notes

Emily M. Bender, Department of Linguistics, University of Washington Email: ebender@uw.edu

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