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Statistical Machine Learning Semester WiSe 2025 / 26
Lecturer Merle Behr
Type of course (Veranstaltungsart) Vorlesung
German title Statistisches Maschinelles Lernen
Contents This course covers the mathematical and statistical
foundations of machine learning (ML). Various approaches
and associated analysis tools for the theoretical
investigation of ML methods are covered. Possible topics
include the theoretical and statistical investigation of
nearest-neighbor methods, decision tree-based methods,
penalized linear regression, kernel methods, ensemble
methods and neural networks. Further possible topics are
causal inference and conformal prediction. An introduction
to empirical process theory is also provided for the
theoretical analysis of these methods.
Literature The course will be based on various material, including journal articles. Some basic references are
"The Elements of Statistical Learning" by Trevor Hastie, Robert Tibshirani, and Jerome Friedman, Springer, 2009;
"A Probabilistic Theory of Pattern Recognition" by Luc Devroye , László Györfi , Gábor Lugosi, Springer, 2013
Recommended previous knowledge Linear algebra, analysis, and probability theory.
Time/Date Thursdays 12:15 - 14:00 (lecture) and Fridays 10:15 - 12:00 (tutorial)
Location BA.621 (Bajuwarenstraße 4, FIDS)
Course homepage https://elearning.uni-regensburg.de/course/view.php?id=71905 (Disclaimer: Dieser Link wurde automatisch erzeugt und ist evtl. extern)
Registration- Please register for the class via SPUR and joint via GRIPS
- Registration for course work/examination/ECTS: FlexNow
Course work (Studienleistungen)- Up to 10 % bonus points are awarded in the module examination (written or oral exam) for
successfully solving the
voluntary exercises in the tutorial. Examination (Prüfungsleistungen)- Written or oral exam towards the end of the lecture period or during the lecture-free period
Modules MV
ECTS 6
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