Seminar by Prof. Klaus Mueller (26 June, 10am-12pm @ LHN-TR+18, The ARC)

26 Jun 2024 10.00 AM - 12.00 PM Current Students, Industry/Academic Partners

Title: Explainable AI for Obtaining Insight

 

Abstract: This talk will briefly introduce explainable AI (XAI) and its applications in the sciences and beyond. Given a model that has learned to accurately predict, XAI allows to extract insight from the model, even if it is nonlinear like deep learning architectures. Moreover, XAI allows to detect modeling artifacts, bugs or artifactual data, thus contributing to a more accurate modeling process. 

 

Biography: Klaus-Robert Müller has been a professor of computer science at Technische Universität Berlin since 2006; at the same time he is directing rsp. co-directing the Berlin Machine Learning Center and the Berlin Big Data Center and most recently BIFOLD. He studied physics in Karlsruhe from1984 to 1989 and obtained his Ph.D. degree in computer science at Technische Universität Karlsruhe in 1992. After completing a postdoctoral position at GMD FIRST in Berlin, he was a research fellow at the University of Tokyo from 1994 to 1995. In 1995, he founded the Intelligent Data Analysis group at GMD-FIRST (later Fraunhofer FIRST) and directed it until 2008. From 1999 to 2006, he was a professor at the University of Potsdam. From 2012 he has been Distinguished Professor at Korea University in Seoul. In 2020/2021 he spent his sabbatical at Google Brain as a Principal Scientist. Among others, he was awarded the Olympus Prise for Pattern Recognition (1999), the SEL Alcatel Communication Award (2006), the Science Prise of Berlin by the Governing Mayor of Berlin (2014), the Vodafone Innovations Award (2017), Pattern Recognition Best Paper award (2020), Digital Signal Processing Best Paper award (2022). In 2012, he was elected member of the German National Academy of Sciences-Leopoldina, in 2017 of the Berlin Brandenburg Academy of Sciences, in 2021 of the German National Academy of Science and Engineering and also in 2017 external scientific member of the Max Planck Society. From 2019 on he became an ISI Highly Cited researcher in the cross-disciplinary area. His research interests are intelligent data analysis and Machine Learning in the sciences (Neuroscience (specifically Brain-Computer Interfaces, Physics, Chemistry) and in industry.

 

Host: Prof. Guan Cuntai