Syllabus

Title
5569 Research & Policy Seminar: Data Science and Machine Learning
Instructors
Dr. Kujtim Avdiu
Type
PI
Weekly hours
2
Language of instruction
Englisch
Registration
02/17/26 to 02/22/26
Registration via LPIS
Notes to the course
Dates
Day Date Time Room
Tuesday 03/10/26 05:00 PM - 07:00 PM D4.0.144
Tuesday 03/17/26 05:00 PM - 07:00 PM D4.0.144
Tuesday 03/24/26 05:00 PM - 07:00 PM D4.0.144
Tuesday 04/07/26 05:00 PM - 07:00 PM D4.0.144
Tuesday 04/14/26 05:00 PM - 07:00 PM D4.0.144
Tuesday 05/05/26 05:00 PM - 07:00 PM D4.0.144
Tuesday 05/19/26 05:00 PM - 07:00 PM D4.0.144
Tuesday 05/26/26 05:00 PM - 07:00 PM D4.0.144
Tuesday 06/02/26 05:00 PM - 07:00 PM D4.0.144
Tuesday 06/09/26 05:00 PM - 07:00 PM D4.0.144
Tuesday 06/16/26 05:00 PM - 07:00 PM D4.0.144
Tuesday 06/23/26 05:00 PM - 07:00 PM D4.0.144
Contents

The Research & Policy Seminar focuses on the advanced application of acquired methods to complex economic scenarios. The goal is to prepare data-based analyses for strategic economic decisions.
Students will refine their methodological skills and apply them to real-world problems. The course emphasizes the transition from theoretical models to full-scale implementation.

Topics covered in Data Science:

  • Advanced Data preparation and Big Data handling
  • Interpretation of results for strategic decision making
  • Visualization of complex results for policy advice

Methods covered in Machine Learning (Applied):

Supervised Learning:

  • Advanced application of Linear and logistic regression
  • Decision Trees and Random Forests (Model tuning and interpretation)
  • XGBoost (Advanced Gradient Boosting)
  • Support Vector Machines (SVMs)

Unsupervised Learning:

  • Cluster analysis for segmentation
  • Principal Component Analysis (PCA) for dimensionality reduction

Optimization:

  • Optimization methods in economic modeling
Learning outcomes

Upon completion, students will be able to develop sophisticated models and interpret results for data-driven economic decisions. They will have mastered the transition from theoretical models to practical implementation in Big Data contexts.

Attendance requirements

Attendance at the course is compulsory. Students may miss a maximum of three units to successfully complete the course.

Teaching/learning method(s)

The course combines lectures and practical exercises. This includes the joint programming of practical examples and a group project, which is concluded with a presentation of the results.

Assessment

60% Presentation of the Group Project: Comprehensive project focusing on developing models and interpreting results

40% Active Participation: Engagement and contribution to discussions.

 

Grading Scheme

Excellent: 85 - 100%

Good: 70 - 85%

Satisfactory: 60 - 70%

Sufficient: 50 - 60%

Not sufficient: 0 - 50%

Prerequisites for participation and waiting lists

Basic knowledge of the R programming language. Completion of the Field Course is recommended

Readings

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Last edited: 2026-01-30



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