Marina Danilevsky, Shipi Dhanorkar, et al.
KDD 2021
Smart systems that apply complex reasoning to make decisions and plan behavior, such as decision support systems and personalized recommendations, are difficult for users to understand. Algorithms allow the exploitation of rich and varied data sources, in order to support human decision-making and/or taking direct actions; however, there are increasing concerns surrounding their transparency and accountability, as these processes are typically opaque to the user. Transparency and accountability have attracted increasing interest to provide more effective system training, better reliability and improved usability. This workshop will provide a venue for exploring issues that arise in designing, developing and evaluating intelligent user interfaces that provide system transparency or explanations of their behavior. In addition, our goal is to focus on approaches to mitigate algorithmic biases that can be applied by researchers, even without access to a given system's inter-workings, such as awareness, data provenance, and validation.
Marina Danilevsky, Shipi Dhanorkar, et al.
KDD 2021
Lingfei Wu, Jian Pei, et al.
AAAI 2023
Aditi Mishra, Bretho Danzy, et al.
IEEE TVCG
Erick Oduor, Kun Qian, et al.
IUI 2020