Schedule
Spring 2011, fourth quarter, weeks 14-21 | Monday 16:00-18:00 in IMADA Seminarrum |
First lecture: April 4, 2011. | Wednesday 12:15-14:00 in IMADA Seminarrum |
Last lecture: May 27, 2011. | Friday 14:00-16:00 in IMADA Seminarrum |
Lectures
Lec. | Date | Topic | Literature and Assignments |
L0 | 04.11.2010 | Presentation | |
L1 | 04.04.2011 | introduction, linear regression, k-nearest neighbor | [B2 1-2.4; B3, 3.1.3; B6 5.1-5.10] [ exercises S1 ] |
L2 | 08.04.2011 | model selection, linear models, probability interpretation | [B1 sc1.1-1.4, sc3.1; B2 sc7.1-7.3, sc7.10-7.11] [ exercises S2 ] |
L3 | 11.04.2011 | Bayesian approach, logistic regression, generalized linear models | [B1 sc1.5 2.1, 2.2, 2.4, 3.1, 3.3.1, 3.3.2, 4.2, 4.3] |
E1 | 13.04.2011 | | [ exercises S3 ] [ solutions ] |
L4 | 15.04.2011 | neural networks, multi-layer perceptron | [B1 sc5.1, 5.2, 5.3] [ exercises S4 ] [ solutions ] |
L5 | 18.04.2011 | neural networks, generative algorithms, GDA, naive Bayes | [B1 sc5.5, 4.2; B2 ch11; L1; L2] |
L6 | 27.04.2011 | linear methods for classification | [B2 ch4; B1 sc7.1] [ obligatory assignment 1 ] [ exercises S5 ] |
L7 | 02.05.2011 | support vector machines and kernels | [B2 sc2.8.2, ch6, sc12.1-12.3.5; B1 sc2.5, sc7-7.1.5; A3 sc119-131; A1; L3] |
L8 | 04.05.2011 | learning theory | [B1 sc7.1.5] [ exercises S6 ] |
L9 | 06.05.2011 | probabilistic graphical models | [B1 ch8] |
L10 | 09.05.2011 | probabilistic graphical models | [B1 ch8] [ exercises S7 ] [ solutions ] |
L11 | 13.05.2011 | probabilistic graphical models, inference | [B1 ch8] [B4 sc14.5(e)] [ exercises S8 ] [ solutions ] |
L12 | 16.05.2011 | mixtures models, EM algorithm, hidden Markov models | [B1 ch9; B1 sc12.1; B1 sc13.1-13.2; B2 ch14.3,14.5] [ exercises S9 ] [ solutions ] |
L13 | 18.05.2011 | bagging, boosting, tree based methods | [B1 sc1.6, 14.1-14.4; B2 sc9.2] [ obligatory assignment 2 ] [ exercises S10 ] |
Literature
Other references
-
[B3] S. Marsland. Machine Learning: An Algorithmic Perspective. CRC Press,
Taylor and Francis group, 2009
-
[B4] S. Russell and P. Norvig. Artificial Intelligence: A Modern Approach. Prentice Hall, 2010.
-
[B5] D. Koller and N. Friedman. Probabilistic Graphical Models. Principles and Techniques. MIT Press, 2009, 399
-
[B6] M.H. Kutner, C.J. Nachtsheim, J. Neter and W. Li. Applied Linear
Statistical Models. McGraw-Hill, 2005
-
[B7] W.N. Venables and B.D. Ripley. Modern Applied Statistics with S. Springer, Fourth Edition. 2002.
-
[B8] F.V. Jensen and T.D. Nielsen. Bayesian Networks and Decision Graphs. Springer New York, 2007.
Evaluation
-
Mandatory assignments, pass/fail, internal evaluation by the teacher.
The mandatory assignments include programming work. The assignments
must be passed before the written exam can be attended.
-
Written exam on June 22, 9.00-12.00, U49
-
Reexam: January 5, 2012
-
Syllabus
Author: Marco Chiarandini
<marco@imada.sdu.dk>
Date: 2011-07-29 11:18:36 CEST
HTML generated by org-mode 6.21b in emacs 23
|