Advanced Data Analysis

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Lecturer
 
Place
Tue3-4(W831)  
Credits
Lecture2  Exercise0  Experiment0
Code
76033
Syllabus updated
2009/4/11
Lecture notes updated
2009/7/15
Access Index
Semester
Spring Semester

Outline of lecture

The objective of this course is to introduce basic ideas and practical
methods of discovering useful structure hidden in the data.

Purpose of lecture

The objective of this course is to introduce basic ideas and practical
methods of discovering useful structure hidden in the data.

Plan of lecture

1. Introduction
2. Pseudo Biorthogonal Basis
3. Principal Component Analysis
4. Kernel Principal Component Analysis
5. Non-Gaussian Component Analysis
6. Spectral Methods of Dimensionality Reduction
7. K-means Clustering
8. Spectral Clustering
9. Outlier Detection
10. Kernel Outlier Detection
11. Independent Component Analysis
12. Blind Source Separation
13. Concluding Remarks and Future Prospects

Textbook and reference

Handouts are provided if necessary.
Pointers to relevant material will be provided.

Related and/or prerequisite courses

Pattern Information Processing
Pattern Recognition (in Japanese)
Probability Theory and Statistics (in Japanese)

Evaluation

Reports related to intelligent data analysis and students' projects.

Comments from lecturer

In order to really learn the methods, it is important to actually use
them. Analyzing your own data using the learned methods is expected.

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