Uni60+: Lachfalten statt Sorgenfalten – Gesundheit 60+
FernUni Schweiz - UniDistance Suisse, Schinerstrasse 18, 3900 Brig
This PhD-level course is jointly organized by the University of Basel (WWZ) and UniDistance Suisse. It offers an intensive, hands-on introduction to modern machine learning methods that are increasingly central to empirical research in economics, business analytics and related fields.
Prof. Anthony Strittmatter, Ph.D. is Professor of Applied Econometrics at UniDistance Suisse in Brig (Wallis). His research focuses on labour and business economics, using causal inference and machine learning to study heterogeneous effects and optimal allocation strategies in public and private policies. He holds a PhD in Economics and Finance from the University of St. Gallen and has held positions at CREST, Stanford, UC Berkeley, and Amazon. He is also affiliated with CREST, the University of Johannesburg, and the CESifo Network.
The course is taught in two parts:
During their stay in Wallis, participants will stay at Hotel Belalp in mixed-gender shared accommodation (dormitory-style rooms, up to 15 beds), with panoramic views of the Aletsch Glacier. Accommodation costs are covered. The setting supports focused learning as well as informal academic exchange in a unique environment.
The course is open to doctoral students from:
The course introduces key concepts and methods of machine learning for prediction, causal analysis, and data exploration, with an emphasis on when and how these tools are useful in economics and business contexts. The course is application-oriented and uses R throughout.
Participants will learn to:
During the second part of the course, students will present a project developed over the duration of the course.
The number of participants is limited. Preference will be given to PhD students from the University of Basel and UniDistance.
For questions about content or organization, please contact:
anthony.strittmatter@unidistance.ch