Dates & Overview
Kickoff: Wednesday, 14th of April, 5pm
Block 1: Friday, 28th of May, 1pm-4pm
Block 2: Friday, 25th of June, 1pm-4pm
Key: will be announced at kickoff event
Target groups: Master Statistics, Master Data Science
Course Description
Classical
statistical learning excels at learning associations and making
accurate predictions. However, many questions like treatment effect
estimation are not associative but causal in nature.
Graphical models
provide a general framework for describing statistical relations
between random variables and performing inference. More recently, they
have become a popular framework for reasoning about causal relations.
In
this seminar, we will introduce the basics of inference in graphical
models, discuss how they can be employed to perform causal inference and
peak into recent research on connections to classical machine learning and interpretable machine learning.
- Trainer/in: Gunnar König