A Scoping Review of Mixed Initiative Visual Analytics in the Automation Renaissance
By: Shayan Monadjemi , Yuhan Guo , Kai Xu and more
Potential Business Impact:
Helps people and computers work better together.
Artificial agents are increasingly integrated into data analysis workflows, carrying out tasks that were primarily done by humans. Our research explores how the introduction of automation re-calibrates the dynamic between humans and automating technology. To explore this question, we conducted a scoping review encompassing twenty years of mixed-initiative visual analytic systems. To describe and contrast the relationship between humans and automation, we developed an integrated taxonomy to delineate the objectives of these mixed-initiative visual analytics tools, how much automation they support, and the assumed roles of humans. Here, we describe our qualitative approach of integrating existing theoretical frameworks with new codes we developed. Our analysis shows that the visualization research literature lacks consensus on the definition of mixed-initiative systems and explores a limited potential of the collaborative interaction landscape between people and automation. Our research provides a scaffold to advance the discussion of human-AI collaboration during visual data analysis.
Similar Papers
Automating the Path: An R&D Agenda for Human-Centered AI and Visualization
Human-Computer Interaction
AI helps us understand data better.
Human-Centered AI and Autonomy in Robotics: Insights from a Bibliometric Study
Robotics
Makes robots work safely with people.
Multi-Agent Data Visualization and Narrative Generation
Artificial Intelligence
Automates data stories, making insights easier to share.