Towards a Science of Human-AI Decision Making: A Survey of Empirical Studies
As AI systems demonstrate increasingly strong predictive performance, their adoption has grown in numerous domains. However, in high-stakes domains such as criminal justice and healthcare, full automation is often not desirable due to safety, ethical, and legal concerns, yet fully manual approaches...
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Zusammenfassung: | As AI systems demonstrate increasingly strong predictive performance, their
adoption has grown in numerous domains. However, in high-stakes domains such as
criminal justice and healthcare, full automation is often not desirable due to
safety, ethical, and legal concerns, yet fully manual approaches can be
inaccurate and time consuming. As a result, there is growing interest in the
research community to augment human decision making with AI assistance. Besides
developing AI technologies for this purpose, the emerging field of human-AI
decision making must embrace empirical approaches to form a foundational
understanding of how humans interact and work with AI to make decisions. To
invite and help structure research efforts towards a science of understanding
and improving human-AI decision making, we survey recent literature of
empirical human-subject studies on this topic. We summarize the study design
choices made in over 100 papers in three important aspects: (1) decision tasks,
(2) AI models and AI assistance elements, and (3) evaluation metrics. For each
aspect, we summarize current trends, discuss gaps in current practices of the
field, and make a list of recommendations for future research. Our survey
highlights the need to develop common frameworks to account for the design and
research spaces of human-AI decision making, so that researchers can make
rigorous choices in study design, and the research community can build on each
other's work and produce generalizable scientific knowledge. We also hope this
survey will serve as a bridge for HCI and AI communities to work together to
mutually shape the empirical science and computational technologies for
human-AI decision making. |
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DOI: | 10.48550/arxiv.2112.11471 |