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Section for Cognitive Systems
DTU Informatics

02450 Introduction to Machine Learning and Data Modeling

data modeling framework
Tan et al. Introduc-
tion to Data Mining
 
Morten Mørup
Morten Mørup
 
Mikkel N. Schmidt
Mikkel N. Schmidt
 
Jens Madsen
Jens Madsen
 
Kit Melissa Larsen
Kit Melissa Larsen
 

Machine learning and data modeling

The course is designed around a data modeling framework shown in the figure. Each lecture/assignment will focus on an aspect of the data modeling framework.

data modeling framework

We emphasize the holistic view of modeling in order to motivate and stress the relevance of individual components and building blocks, disseminate the obtained competence (see the course learning obejctives), and make them applicable for a broad spectrum of engineering problems in e.g. biomedical engineering, chemistry, electrical engineering, and informatics.

Resources

Location

Lectures and computer assignment takes place in Building 303, Auditorium 41 (lectures), and Databar 047 and 048 (exercises), Spring 2013.

Reading material

The course is based on the book: Pang-Ning Tan, Michael Steinbach, and Vipin Kumar, "Introduction to Data Mining."
The book is available from Polyteknisk Boghandel

Lecture slides and exercises

Lecture slide handouts, assignment instruction etc. is available at the DTU Campusnet course page (requires formal enrolment to the course).

Course description

A description of the course can be found at the DTU Coursebase

Teacher

Lecture schedule

No. Date Teacher Subject Reading material
1 5 Feb 2013 MM Introduction 1.1-1.4
Data: Feature extraction, and visualization
2 12 Feb 2013 MM Data and feature extraction 2.1-2.3 + (A) + B.1
3 19 Feb 2012 MM Measures of similarity and summary statistics 2.4 + 3.1-3.2 + C1-C2
4 26 Feb 2013 MM Data visualization 3.3
Supervised learning: Classification and regression
5 5 Mar 2013 MM Decision trees and linear regression 4.1-4.3 + D
6 12 Mar 2013 MM Overfitting and performance evaluation 4.4-4.6
7 19 Mar 2013 MM Nearest neighbor, naive Bayes, and artificial neural networks 5.2-5.4
26 Mar 2013 Easter Holiday
8 2 Apr 2013 MM Ensemble methods and multi-class classifiers 5.6-5.8
Unsupervised learning: Clustering and density estimation
9 9 Apr 2013 MM K-means and hierarchical clustering 8.1-8.3+8.5.7
10 16 Apr 2013 MM Mixture models and association mining 9.2.2 + 6.1-6.3
11 23 Apr 2013 MM Density estimation and anomaly detection 10.1-10.4
Machine learning and data modelling in practice
12 30 Apr 2013 MM Putting it all together: Summary and overview  
13 7 May 2013 MM Project presentation  

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