2026/2027 BA-BHAAV2624U Applied Machine Learning
| English Title | |
| Applied Machine Learning |
Course information |
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| Language | English |
| Course ECTS | 7.5 ECTS |
| Type | Elective |
| Level | Bachelor |
| Duration | One Semester |
| Start time of the course | Autumn |
| Timetable | Course schedule will be posted at calendar.cbs.dk |
| Max. participants | 60 |
| Study board |
Study Board for General Management
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| Programme | Bachelor of Science in Economics and Business Administration |
| Course coordinator | |
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| Teaching methods | |
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| Last updated on 30-01-2026 | |
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| Learning objectives | ||||||||||||||||||||||||||
The goal of the course is to demonstrate how
machine learning (ML) methods can be applied across a variety of
business domains, including econometrics, finance, macroeconomics,
and management. The emphasis is on the practical application of
these methods, with case studies designed to illustrate when and
why a particular method is (or is not) suitable for a given type of
data. Students will:
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| Course prerequisites | ||||||||||||||||||||||||||
| Familiarity with basic statistics concepts (probability, expectation) and basic regression analysis is assumed, and prior experience with the statistical software R or Python is advantageous. | ||||||||||||||||||||||||||
| Examination | ||||||||||||||||||||||||||
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| Course content, structure and pedagogical approach | ||||||||||||||||||||||||||
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The course will cover a range of machine learning (ML) methods with a particular emphasis on their practical applications. While the focus is on applied aspects, all methods will be introduced in a rigorous and precise manner. The topics to be covered include:
1. Overview of statistical learning 2. Linear regression 3. Classification 4. Resampling methods 5. Model selection and regularization 6. Moving Beyond Linearity 7. Tree-based methods 8. Deep learning 9. Survival analysis and censored data 10. Unsupervised learning 11. Multiple testing |
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| Research-based teaching | ||||||||||||||||||||||||||
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CBS’ programmes and teaching are research-based. The following
types of research-based knowledge and research-like activities are
included in this course:
Research-based knowledge
Research-like activities
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| Description of the teaching methods | ||||||||||||||||||||||||||
| Teaching consists of lectures and practice
workshops. Each topic includes a one-hour methodological lecture
followed by a one-hour exercise session. During the exercise
sessions, students will work on relevant problems with guidance
from the course instructor. Recorded solutions for selected
sessions will be made available on the course website.
The examination will draw on material from the practice exercises, typically involving one or more ML methods. Solutions to these exercises may be discussed with the instructor during the scheduled practice sessions; however, no additional feedback will be provided prior to the exam. Course materials include lecture slides, code scripts, and the course textbook. Additional materials for the practical sessions will be posted on the course website. An introduction to the basics of R will be provided during the first exercise session. |
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| Feedback during the teaching period | ||||||||||||||||||||||||||
| During the practice sessions, students will work on exercises in small groups and discuss solutions or difficulties with the instructor. Recorded solutions for selected sessions will be made available on the course website. | ||||||||||||||||||||||||||
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Advanced level book:
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