Human-agent collaboration: Can an agent be a partner?
Rachel Bellamy, Sean Andrist, et al.
CHI EA 2017
As machine learning (ML) becomes increasingly popular, developers without deep experience in ML - who we will refer to as ML practitioners - are facing the need to diagnose problems with ML models. Yet successful diagnosis requires high-level expertise that practitioners lack. As in many complex data-oriented domains, visualization could help. This two-phase study explored the design of visualizations to aid ML diagnosis. In phase 1, twelve ML practitioners were asked to diagnose a model using ten state-of-the-art visualizations; seven design themes were identified. In phase 2, several design themes were embodied in an interactive visualization. The visualization was used to engage practitioners in a participatory design exercise that explored how they would carry out multi-step diagnosis using the visualization. Our findings provide design implications for tools that better support ML diagnosis by non-expert practitioners.
Rachel Bellamy, Sean Andrist, et al.
CHI EA 2017
Peter K. Malkin, Sanjaya Addanki
AAAI 1990
Yunfeng Zhang, Rachel Bellamy, et al.
CHI EA 2021
Tathagata Chakraborti, Kartik Talamadupula, et al.
AAAI-FS 2017