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AI Behavioral Science

Author

Listed:
  • Matthew O. Jackson
  • Qiaozhu Me
  • Stephanie W. Wang
  • Yutong Xie
  • Walter Yuan
  • Seth Benzell
  • Erik Brynjolfsson
  • Colin F. Camerer
  • James Evans
  • Brian Jabarian
  • Jon Kleinberg
  • Juanjuan Meng
  • Sendhil Mullainathan
  • Asuman Ozdaglar
  • Thomas Pfeiffer
  • Moshe Tennenholtz
  • Robb Willer
  • Diyi Yang
  • Teng Ye

Abstract

We discuss the three main areas comprising the new and emerging field of "AI Behavioral Science". This includes not only how AI can enhance research in the behavioral sciences, but also how the behavioral sciences can be used to study and better design AI and to understand how the world will change as AI and humans interact in increasingly layered and complex ways.

Suggested Citation

  • Matthew O. Jackson & Qiaozhu Me & Stephanie W. Wang & Yutong Xie & Walter Yuan & Seth Benzell & Erik Brynjolfsson & Colin F. Camerer & James Evans & Brian Jabarian & Jon Kleinberg & Juanjuan Meng & Se, 2025. "AI Behavioral Science," Papers 2509.13323, arXiv.org.
  • Handle: RePEc:arx:papers:2509.13323
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