From Human-Computer Interaction to Human-AI Interaction: New Challenges
and Opportunities for Enabling Human-Centered AI
- URL: http://arxiv.org/abs/2105.05424v1
- Date: Wed, 12 May 2021 04:30:45 GMT
- Title: From Human-Computer Interaction to Human-AI Interaction: New Challenges
and Opportunities for Enabling Human-Centered AI
- Authors: Wei Xu, Marvin J. Dainoff, Liezhong Ge, Zaifeng Gao
- Abstract summary: We focus on the unique characteristics of AI technology and the differences between non-AI computing systems and AI systems.
We promote the research and application of human-AI interaction (HAII) as an interdisciplinary collaboration.
- Score: 7.3800748017024755
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: While AI has benefited humans, it may also harm humans if not appropriately
developed. We conducted a literature review of current related work in
developing AI systems from an HCI perspective. Different from other approaches,
our focus is on the unique characteristics of AI technology and the differences
between non-AI computing systems and AI systems. We further elaborate on the
human-centered AI (HCAI) approach that we proposed in 2019. Our review and
analysis highlight unique issues in developing AI systems which HCI
professionals have not encountered in non-AI computing systems. To further
enable the implementation of HCAI, we promote the research and application of
human-AI interaction (HAII) as an interdisciplinary collaboration. There are
many opportunities for HCI professionals to play a key role to make unique
contributions to the main HAII areas as we identified. To support future HCI
practice in the HAII area, we also offer enhanced HCI methods and strategic
recommendations. In conclusion, we believe that promoting the HAII research and
application will further enable the implementation of HCAI, enabling HCI
professionals to address the unique issues of AI systems and develop
human-centered AI systems.
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