The future of human-AI collaboration: a taxonomy of design knowledge for
hybrid intelligence systems
- URL: http://arxiv.org/abs/2105.03354v1
- Date: Fri, 7 May 2021 16:10:44 GMT
- Title: The future of human-AI collaboration: a taxonomy of design knowledge for
hybrid intelligence systems
- Authors: Dominik Dellermann, Adrian Calma, Nikolaus Lipusch, Thorsten Weber,
Sascha Weigel, and Philipp Ebel
- Abstract summary: We identify the need for developing socio-technological ensembles of humans and machines.
We present a structured overview of interdisciplinary research on the role of humans in the machine learning pipeline.
Second, we envision hybrid intelligence systems and conceptualize the relevant dimensions for system design.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Recent technological advances, especially in the field of machine learning,
provide astonishing progress on the road towards artificial general
intelligence. However, tasks in current real-world business applications cannot
yet be solved by machines alone. We, therefore, identify the need for
developing socio-technological ensembles of humans and machines. Such systems
possess the ability to accomplish complex goals by combining human and
artificial intelligence to collectively achieve superior results and
continuously improve by learning from each other. Thus, the need for structured
design knowledge for those systems arises. Following a taxonomy development
method, this article provides three main contributions: First, we present a
structured overview of interdisciplinary research on the role of humans in the
machine learning pipeline. Second, we envision hybrid intelligence systems and
conceptualize the relevant dimensions for system design for the first time.
Finally, we offer useful guidance for system developers during the
implementation of such applications.
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