The impending ubiquity of cognitive objects
Maryam Ashoori, Rachel Bellamy, et al.
AAAI 2016
We explore trust in a relatively new area of data science: Automated Machine Learning (AutoML). In AutoML, AI methods are used to generate and optimize machine learning models by automatically engineering features, selecting models, and optimizing hyperparameters. In this paper, we seek to understand what kinds of information influence data scientists' trust in the models produced by AutoML? We operationalize trust as a willingness to deploy a model produced using automated methods. We report results from three studies - qualitative interviews, a controlled experiment, and a card-sorting task - to understand the information needs of data scientists for establishing trust in AutoML systems. We find that including transparency features in an AutoML tool increased user trust and understandability in the tool; and out of all proposed features, model performance metrics and visualizations are the most important information to data scientists when establishing their trust with an AutoML tool.
Maryam Ashoori, Rachel Bellamy, et al.
AAAI 2016
Zhenjie Zhao, Yufang Hou, et al.
ACL 2022
Sahil Suneja, Yufan Zhuang, et al.
EuroS&P 2023
Zahra Ashktorab, Mohit Jain, et al.
CHI 2019