Michael Muller, April Yi Wang, et al.
IUI 2021
Automated Machine Learning (AutoML) is a rapidly growing set of technologies that automate the model development pipeline by searching model space and generating candidate models. A critical, final step of AutoML is human selection of a final model from dozens of candidates. In current AutoML systems, selection is supported only by performance metrics. Prior work has shown that in practice, people evaluate ML models based on additional criteria, such as the way a model makes predictions. Comparison may happen at multiple levels, from types of errors, to feature importance, to how the model makes predictions of specific instances. We developed Model LineUpper to support interactive model comparison for AutoML by integrating multiple Explainable AI (XAI) and visualization techniques. We conducted a user study in which we both evaluated the system and used it as a technology probe to understand how users perform model comparison in an AutoML system. We discuss design implications for utilizing XAI techniques for model comparison and supporting the unique needs of data scientists in comparing AutoML models.
Michael Muller, April Yi Wang, et al.
IUI 2021
Erick Oduor, Kun Qian, et al.
IUI 2020
Kenya Andrews, Lamogha Chiazor
AAAI 2025
Amit Dhurandhar, Karthikeyan Natesan Ramamurthy, et al.
NeurIPS 2023