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Introduction to machine learning and data mining
Computer Science and ICT, Data, AI
Organization logo: Technical University of Denmark

About this course

Structured data modelling. Feature extraction and dimensionality reduction. Similarity measures and summary statistics. Visualization and interpretation of models. Overfitting and generalization. Regression and classification (decision trees, nearest neighbor, naive Bayes, neural networks, and ensemble methods). Clustering (k-means, hierarchical clustering, and mixture models). Association rules. Density estimation and outlier detection. Applications in a broad range of engineering sciences.

Expected learning outcomes

  • At the end of the course the learner will be able to:

  • Describe the major steps involved in data modeling from preparing the data and modeling the data to evaluating and disseminating the results.

  • Discuss key machine learning concepts such as feature extraction and cross-validation and generalization.

  • Sketch how the data modeling methods work and describe their assumptions and limitations.

  • Match practical problems to standard data modeling problems such as regression/classification/density estimation/clustering and association mining.

  • Apply the data modeling framework to a broad range of application domains in medical engineering/bio-informatics/chemistry/electrical engineering and computer science.

  • Compute the results of the data modeling framework by use of Matlab/ R or Python.

  • Use visualization techniques and statistics to evaluate model performance and data issues.

  • Combine and modify data modeling tools in order to analyze a data set of their own and disseminate the results of the analysis.

Examination

Written exam or oral online exam

Course requirements

First year university mathematics including basic course in linear algebra and calculus, furthermore basic knowledge of probability theory or statistics, basic knowledge of either Matlab, Python or R

Activities

The activities alternate between lectures, problem classes and hands-on Matlab, R or Python exercises.

More information

https://kurser.dtu.dk/course/02450
  • Local course code
    02450
  • Study load
    ECTS 5
  • Level
    Bachelor
  • Contact hours per week
    4
  • Instructors
    Morten Mørup
  • Mode of delivery
    Hybrid
  • Course coordinator
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