Seminar: Explainable AI for Data Science
Explainable AI is a recent and growing subfield of machine learning (ML) that aims to bring transparency into ML models without sacrificing their predictive accuracy. This seminar will explore current research on the use of Explainable AI for extracting insights from large datasets of interest. Use cases in biomedicine, chemistry, earth sciences, and digital humanities will be covered. Students will select a few papers from a pool of thematically relevant research papers, which they will read and present over the course of the semester.
Kick-off meeting: 22 October 2024 in room KöLu24-26/SR 006
cf. here for the organization of the course.