2504MS09

Machine Learning

The course exposes participants to recent developments in the field of machine learning (ML) and discusses their ramifications for business and economics. ML comprises theories, concepts, and algorithms to extract patterns from observational data. The prevalence of data (“big data”) has led to a surge in the interest in ML to leverage existing data assets for improved decision-making and business process optimization. Concepts such as business analytics, data science, and artificial intelligence are omnipresent in decision-makers’ mindset and ground, to a large extent, on ML. Familiarizing course participants with these concepts and enabling them to apply cutting-edge ML algorithms to real-world decision problems in management, policy development, and research is the overarching objective of
the course. Accordingly, the course targets Ph.D. students with a general interest in algorithmic decision-making and/or concrete plans to employ ML in their research. A clear and approachable explanation of relevant methodologies and recent ML developments paired with a batterie of practical exercises using contemporary software libraries for (deep) ML will ready participants for design-science or empirical-quantitative research projects.

Date:

1. - 4. April 2025
 

Location:

Harnack-Haus Tagungsstätte der Max-Planck-Gesellschaft 
Ihnestr. 16-20
14195 Berlin

The course will be offered over a four-day period comprising lecture, tutorial, and discussion sessions.

Course Language:

English

Lecturer:

Prof. Dr. Stefan Lessmann
Humboldt-Universität zu Berlin

 

Registration:

Click for information on fees, payment and registration,
or email us: prodok@vhbonline.org.

Registration Deadline: 1. Februar 2025