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  Pattern Analysis (PA)

Lecturer
Dr.-Ing. Christian Riess

Details
Vorlesung
3 cred.h, benoteter certificate, ECTS studies, ECTS credits: 5, Sprache Deutsch
Time and place: Thu 14:15 - 15:45, H16; Fri 12:15 - 13:45, H16

Fields of study
WPF MT-MA-BDV 1-4 (ECTS-Credits: 5)
WPF IuK-MA-MMS-INF 1-4 (ECTS-Credits: 5)
WPF IuK-MA-MMS 1-4 (ECTS-Credits: 5)
WPF CME-MA 1-4 (ECTS-Credits: 5)
WF CME-MA 1-4 (ECTS-Credits: 5)
WPF INF-MA 1-4 (ECTS-Credits: 5)
WPF CE-MA-INF ab 1 (ECTS-Credits: 5)

Prerequisites / Organisational information
Pattern Recognition

Contents
This lecture complements (and builds on top of) the lectures "Introduction to Pattern Recognition" and "Pattern Recognition". In this third edition, we focus on modeling of densities, and how to use these models for analyzing the data. Major topics of this lecture are regression, density estimation, manifold learning, hidden Markov models, conditional random fields, and random forests. The lecture is accompanied by exercises, where theoretical results are practically implemented and applied.

Recommended literature
  • Christopher Bishop, Pattern Recognition and Machine Learning, Springer Verlag, Heidelberg, 2006
  • Richard O. Duda, Peter E. Hart und David G. Stork, Pattern Classification, Second Edition, 2004

  • Trevor Hastie, Robert Tibshirani und Jerome Friedman, The Elements of Statistical Learning: Data Mining, Inference, and Prediction, Second Edition, Springer Verlag, 2009

ECTS information:
Title:
Pattern Analysis

Credits: 5

Prerequisites
Pattern Recognition

Contents
This lecture complements (and builds on top of) the lectures "Introduction to Pattern Recognition" and "Pattern Recognition". In this third edition, we focus on modeling of densities, and how to use these models for analyzing the data. Major topics of this lecture are regression, density estimation, manifold learning, hidden Markov models, conditional random fields, and random forests. The lecture is accompanied by exercises, where theoretical results are practically implemented and applied.

Literature
  • Christopher Bishop, Pattern Recognition and Machine Learning, Springer Verlag, Heidelberg, 2006
  • Richard O. Duda, Peter E. Hart und David G. Stork, Pattern Classification, Second Edition, 2004

  • Trevor Hastie, Robert Tibshirani und Jerome Friedman, The Elements of Statistical Learning: Data Mining, Inference, and Prediction, Second Edition, Springer Verlag, 2009

Additional information
Keywords: Mustererkennung, Musteranalyse
Expected participants: 60, Maximale Teilnehmerzahl: 80
www: http://www5.informatik.uni-erlangen.de/lectures/ss-16/pattern-analysis-pa/

Assigned lectures
UE: Pattern Analysis Exercises
Lecturer: Sebastian Käppler, M. Sc.
www: http://www5.cs.fau.de/lectures/ss-16/pattern-analysis-pa/exercises/

Verwendung in folgenden UnivIS-Modulen
Startsemester SS 2016:
Pattern Analysis (lecture + exercises) (PA-VÜ)
Pattern Analysis (lecture only) (PA-V)

Department: Chair of Computer Science 5 (Pattern Recognition)
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