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Third-Cycle Courses

Faculty of Engineering | Lund University

Details for Course EIT155F Introduction to Machine Learning

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General
  • EIT155F
  • Temporary
Course Name
  • Introduction to Machine Learning
Course Extent
  • 7.5
Type of Instruction
  • Third-cycle course
Administrative Information
  • 7201 (Electrical and Information Technology)
  •  -12-08
  • Professor Thomas Johansson

Current Established Course Syllabus

General
  • English
  • If sufficient demand
Aim
  • To give knowledge about the basic theory for Machine Learning -- construction of automatised systems that can learn/gather information from data, for example learn to recognize characters in a hand-written text.
Contents
  • Training, testing, generalization, hypothesis spaces.
    Linear regression and classification.
    Kernel methods and support vector machines.
    Graphical models.
    Mixture models, Expectation Maximization.
    Variational and sampling methods.
Knowledge and Understanding
  • For a passing grade the doctoral student must
  • have a good knowledge of the statistical principles used in machine learning
    have knowledge of the disciplinary foundation for the design and analysis of learning algorithms and systems
    demonstrate in-depth knowledge of methods and theories in the field of machine learning.
Competences and Skills
  • For a passing grade the doctoral student must
  • demonstrate abilities to develop learning techniques and systems based on relevant technological issues
    demonstrate the ability to identify, formulate, design, and implement learning components and applications.
Judgement and Approach
  • For a passing grade the doctoral student must
  • demonstrate the ability to critically evaluate and compare different learning models and learning algorithms for different problem setups and quality characteristics.
Types of Instruction
  • Lectures
  • Seminars
  • Project
  • Self-study literature review
Examination Formats
  • Written assignments
  • Seminars given by participants
  • Compulsory assignments including computer work and written reports. Assignments shall be peer-reviwed and be discussed in the study group.
  • Failed, pass
Admission Requirements
Assumed Prior Knowledge
  • FMA420 Linear Algebra, FMA430 Calculus in Several Variables, Fourier analysis and theory of linear systems corresponding to FMAF05 Mathematics-Systems and Transforms, and one of the basic courses in Mathematical Statistics, e.g. FMS012.
Selection Criteria
Literature
  • Bishop, C. M: Pattern Recognition and Machine Learning. Springer, 2006. ISBN 9780387310732.
Further Information
  • Examiner: Maria Kihl (maria.kihl@eit.lth.se)
Course code
  • EIT155F
Administrative Information
  •  -12-08
  • Professor Thomas Johansson

All Established Course Syllabi

1 course syllabus.

Valid from First hand in Second hand in Established
Autumn 2016 2016‑11‑11 07:09:42 2016‑11‑14 13:53:04 2016‑12‑08

Current or Upcoming Published Course Occasion

No matching course occasion was found.

All Published Course Occasions

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0 course occasions.


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