Machine Learning and Pervasive Computing (Summer 2015): Difference between revisions

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** [[Media:ML_09.pdf | Probabilistic Graphical Models (pdf)]]
** [[Media:ML_09.pdf | Probabilistic Graphical Models (pdf)]]
* Monday, '''June 29th, 2015, 08.15 - 09.45''': Lecture 10
* Monday, '''June 29th, 2015, 08.15 - 09.45''': Lecture 10
** [[Media:ML_10.pdf | Topic Models (pdf)]]
* Monday, '''July 06th, 2015, 08.15 - 09.45''': Lecture 11
* Monday, '''July 06th, 2015, 08.15 - 09.45''': Lecture 11
** [[Media:ML_11.pdf | Unsupervised Learning (pdf)]]
** [[Media:ML_11-2.pdf | Clustering and density based clustering (Thach Nguyen) (pdf)]]
* Monday, '''July 13th, 2015, 08.15 - 09.45''': Lecture 12
* Monday, '''July 13th, 2015, 08.15 - 09.45''': Lecture 12
** [[Media:ML_12.pdf | Anomaly detection, Online learning, Recommender Systems (pdf)]]


==Requirements==
==Requirements==

Latest revision as of 10:09, 6 July 2015

Details

Workload/ECTS Credits: 180h, 5 ECTS
Module: M.Inf.1223: Spezielle fortgeschrittene Aspekte der Computernetzwerke; ITIS: 3.33
Lecturer: Stephan Sigg
Teaching assistant: --
Time: Mondays, 08.15 - 09.45.; Exercise: (bi-weekly)
Place: IfI 3.101
UniVZ [1]


Course Overview

The course will give a comprehensive overview on Machine learning with applications in Pervasive Computing.

  • Course topics
    • Introduction to Machine learning
    • Features and feature extraction
    • Feature subset selection
    • Performance metrics
    • Rule-based learning
    • Regression approaches
    • High dimensional data
    • Artificial Neural Network learning
    • Probabilistic approaches
    • Topic models
    • nearest neighbour methods
    • Unsupervised learning and Clustering
    • Anomaly detection
    • Recommender systems

Schedule

Requirements

  • Active participation in the exercises required.

Reading List