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Studying human-AI collaboration protocols: the case of the Kasparov’s law in radiological double reading
35
Zitationen
3
Autoren
2021
Jahr
Abstract
Our study shows that good interaction protocols can guarantee improved decision performance that easily surpasses the performance of individual agents, even of realistic super-human AI systems. This finding highlights the importance of focusing on how to guarantee better co-operation within human-AI teams, so to enable safer and more human sustainable care practices.
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