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BE4M33SSU - Statistical Machine Learning

Overview

The aim of statistical machine learning is to develop systems (statistical models and algorithms) for learning to solve prediction tasks given a set of examples and some prior knowledge about the task. Students will gain the ability to construct learning systems for typical applications by successfully combining appropriate models and learning methods.

News

* 13.12.2022 The last lecture on January 10 will be a Q&A lecture. Post your questions to the corresponding thread in the discussion forum.

Details

  • Prerequisites:
    • probability theory and statistics comparable to the course A0B01PSI
    • pattern recognition and decision theory comparable to the course AE4B33RPZ
    • linear algebra and optimisation comparable to the course AE4B33OPT
  • Course format: (2/2)
    • lectures: weekly
    • tutorial classes: weekly (alternating practical and theoretical labs)
  • Schedule: WS22/23
    • Lectures: Tuesday 12:45-14:15, KN:E-107
    • Labs/Seminars: Thursday 9:15-10:45, 11:00-12:30 and 12:45-14:15, all in KN:E-112
  • Grading/Credits:
    • Thresholds for passing: at least 50% of the regular points in the practical labs and at least 50% of the regular points in the exam
    • Weights for final grading: 40% practical labs + 60% written exam = 100% (+ bonus points)
    • Credits: 6 CP
  • Textbooks and References:
    • [1] M. Mohri, A. Rostamizadeh and A. Talwalkar, Foundations of Machine Learning, MIT Press, 2012 [PDF]
    • [2] T. Hastie, R. Tibshirani and J. Friedman, The Elements of Statistical Learning, Springer, 2010 [PDF]
    • [3] I. Goodfellow, Y. Bengio and A. Courville, Deep Learning, MIT Press, 2016 [link]
    • [4] G. Louppe, Understanding Random Forests: From Theory to Practice, 2014 [link]

Materials

courses/be4m33ssu/start.txt · Last modified: 2022/12/13 15:53 by flachbor