What Human-Horse Interactions may Teach us About Effective Human-AI Interactions
Mohammad Hossein Jarrahi, Stanley Ahalt

TL;DR
This paper uses human-horse interactions as a metaphor to propose principles for designing effective, trustworthy, and adaptable human-AI partnerships emphasizing trust, communication, and mutual learning.
Contribution
It introduces a novel framework inspired by human-horse relationships to guide the development of human-AI interactions beyond traditional benchmarks.
Findings
Trust is built through predictability and shared understanding.
Communication and feedback are essential for mutual adaptability.
Long-term interaction enhances partnership quality.
Abstract
This article explores human-horse interactions as a metaphor for understanding and designing effective human-AI partnerships. Drawing on the long history of human collaboration with horses, we propose that AI, like horses, should complement rather than replace human capabilities. We move beyond traditional benchmarks such as the Turing test, which emphasize AI's ability to mimic human intelligence, and instead advocate for a symbiotic relationship where distinct intelligences enhance each other. We analyze key elements of human-horse relationships: trust, communication, and mutual adaptability, to highlight essential principles for human-AI collaboration. Trust is critical in both partnerships, built through predictability and shared understanding, while communication and feedback loops foster mutual adaptability. We further discuss the importance of taming and habituation in shaping…
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Taxonomy
TopicsEthics and Social Impacts of AI
