From Human Bias to Robot Choice: How Occupational Contexts and Racial Priming Shape Robot Selection
By: Jiangen He, Wanqi Zhang, Jessica Barfield
As artificial agents increasingly integrate into professional environments, fundamental questions have emerged about how societal biases influence human-robot selection decisions. We conducted two comprehensive experiments (N = 1,038) examining how occupational contexts and stereotype activation shape robotic agent choices across construction, healthcare, educational, and athletic domains. Participants made selections from artificial agents that varied systematically in skin tone and anthropomorphic characteristics. Our study revealed distinct context-dependent patterns. Healthcare and educational scenarios demonstrated strong favoritism toward lighter-skinned artificial agents, while construction and athletic contexts showed greater acceptance of darker-toned alternatives. Participant race was associated with systematic differences in selection patterns across professional domains. The second experiment demonstrated that exposure to human professionals from specific racial backgrounds systematically shifted later robotic agent preferences in stereotype-consistent directions. These findings show that occupational biases and color-based discrimination transfer directly from human-human to human-robot evaluation contexts. The results highlight mechanisms through which robotic deployment may unintentionally perpetuate existing social inequalities.
Similar Papers
No Thoughts Just AI: Biased LLM Hiring Recommendations Alter Human Decision Making and Limit Human Autonomy
Computers and Society
People copy AI's unfair hiring choices.
No Thoughts Just AI: Biased LLM Recommendations Limit Human Agency in Resume Screening
Computers and Society
AI bias makes people unfairly favor job candidates.
Designing for Difference: How Human Characteristics Shape Perceptions of Collaborative Robots
Robotics
Helps robots act nicely with old people.